Forschung



Anwendungsbereiche


n the Hospital, Portrait Shot of Topless Female Patient Undergoing Mammogram Screening Procedure. Healthy Young Female Does Cancer Preventive Mammography Scan. Modern Hospital with High Tech Machines.
(c) Adobe Stock 212622163

Team:  Can Aykul, Jonas Wallat, Dr. Cameron Pierson, Prof. Dr. Maria-Esther Vidal

Im Projekt " Breast Cancer Network Hannover", das sich auf Brustkrebs konzentriert, arbeiten Prof. Tjoung-Won Park-Simon und Dr. Thilo Dörk-Bousset aus der Frauenklinik der MHH mit dem Leibniz AI Lab zusammen, um Faktoren für den Therapieerfolg bei Patientinnen mit der Diagnose Brustkrebs zu identifizieren. Dazu werden standardisierte Daten von rund 5000 Patientinnen des regionalen Netzwerks " Network Breast Cancer" ausgewertet. In einem ersten Schritt werden Anamnesedaten der Patientin und ihrer Familie, Tumormerkmale, Therapiedaten, Daten zu Nachuntersuchungen und Überleben, genetische Informationen sowie sozioökonomische Daten der Patientin integriert, um eine umfassende Analyse zu ermöglichen. Besonderes Augenmerk wird dabei auf die Assoziation von sozioökonomischen Aspekten wie Bildung und Migrationshintergrund mit dem Therapieerfolg gelegt. Ein weiterer Schwerpunkt ist die Identifizierung von Subpopulationen von Patienten auf der Grundlage des Erfolgs verschiedener Therapieoptionen, um eine gezielte, personalisierte Therapie zu ermöglichen. Insbesondere soll das Projekt optimierte Vorschläge liefern, welche Patienten eher von einer neoadjuvanten Therapie und welche eher von einer Operation profitieren werden.

Während der derzeitige Ansatz zur Vorhersage der Rückfallwahrscheinlichkeit ein logistisches Regressionsmodell verwendet, wollen wir auf komplexere Modelle wie decision trees (Entscheidungsbäume), random forests (Zufallswälder), neuronale Netze und die Einführung von vorhandenem Fachwissen über Brustkrebs unter Verwendung von Knowledge Graphs (Wissensgraphen) erweitern. Dazu wird ein Knowledge Graph modelliert und auf der Grundlage der erhaltenen Patientendaten ausgefüllt. Aufbauend auf Benchmark-Modellen zur Einbettung von Knowledge Graphs wie TransE [1], ComplEx [2] und RotatE [3] wird ein Rahmenwerk entwickelt, das bestehende biomedizinische Ontologien (z.B. Gene Ontology) einbeziehen kann, um so die Rückfallwahrscheinlichkeit einer Behandlung vorherzusagen. Darüber hinaus wird zur Unterstützung der Entscheidungsfindung des Arztes ein Knowledge Graph für Arzneimittelinteraktionen verwendet, um latente semantische Darstellungen von Arzneimitteln/Medikamenten zu erlernen und potenziell schädliche Arzneimittelinteraktionen vorherzusagen, die auftreten können, wenn ein Patient mehrere Medikamente gleichzeitig einnehmen muss. Bei der Einführung komplexerer Modelle müssen wir ein Gleichgewicht zwischen Modellleistung und Interpretierbarkeit unserer Ansätze finden. Insbesondere bei der Verwendung von neuronalen Netzen werden wir bestehende Interpretierbarkeitstechniken wie LIME [4] und Shapley-Werte [5] nutzen.

Angesichts der ethischen Implikationen der Entwicklung und Verwendung von Modellen des maschinellen Lernens als Entscheidungsunterstützungssysteme im Gesundheitswesen nutzen wir diese Gelegenheit, um parallel zur Entwicklung der oben beschriebenen Lösungen einen bestehenden ethischen Rahmen zu bewerten: Die rasche und zunehmende Entwicklung des maschinellen Lernens im Gesundheitswesen (ML-HCAs, englisch: machine learning in healthcare applications) erfordert eine ethische Prüfung, um die Auswirkungen neuartiger medizinischer Geräte und Methoden auf Patienten und Gesellschaft zu bewerten. Es ist zwingend erforderlich, dass solche ethischen Untersuchungen und die damit verbundenen ethischen Aspekte untersucht werden. In dem Maße, in dem die Medizintechnik voranschreitet, muss auch eine gleichzeitige ethische Prüfung der Nutzung und des Anwendungsbereichs erfolgen, z. B. der Art der Systemanwendung, der dem System zugrunde liegenden Daten und der Auswirkungen auf den Patienten, die Gesellschaft und das Gesundheitswesen. Eine solche ethische Prüfung ist zwingend erforderlich, um zu vermeiden, dass maschinelle Lernwerkzeuge, die im Gesundheitswesen eingesetzt werden, Verzerrungen enthalten oder verstärken.

Es wurden bereits ethische Rahmenwerke vorgeschlagen (z. B. Floridi & Strait, 2020; Saltz & Dewar, 2019), doch Char und Kollegen (2020) haben ein Rahmenwerk entwickelt, das sorgfältig und transparent auf der Grundlage bereits vorhandener Literatur aufgebaut ist, um systematisch ethische Überlegungen zu identifizieren, die für ML-HCAs spezifisch sind. Während einige für einen "Ethiker als Designer" plädieren, der den Entwicklungsprozess von Werkzeugen des maschinellen Lernens prüft (van Wynsberghe & Robbins, 2014), hat die Implementierung eines solchen ethischen Identifikationsrahmens in einem Forschungsteam einen größeren Nutzen. Wie bereits an anderer Stelle vorgeschlagen wurde (z. B. Armstrong, 2017; Blay et al., 2012), sollte die Entwicklung von KI in der Medizin interdisziplinär und/oder durch Co-Design erfolgen. Daher bietet die Umsetzung des Rahmens von Char und Kollegen (2020) in einem Forschungsteam den Vorteil der Überprüfung (z. B. van Wynsberghe & Robbins, 2014) durch die Forscher dieser Studie und fördert gleichzeitig die Identifizierung und das Management ethischer Überlegungen vor Ort in der Forschungsgruppe. Eine solche Umsetzung würde die ethische Entwicklung von ML-HCAs fördern. Der vorgeschlagene Rahmen muss jedoch noch unabhängig evaluiert werden. Daher wollen wir den Pipeline-Rahmen von Char und Kollegen (2020) im Kontext einer Forschungsgruppe bewerten, die maschinelle Lerntechniken zur Identifizierung von Biomarkern bei Brustkrebspatientinnen entwickeln will, um den Erfolg der Chemotherapie vorherzusagen.

Quellenangaben:

[1] Bordes, Antoine, et al. "Translating embeddings for modeling multi-relational data." Advances in neural information processing systems 26 (2013).
[2] Trouillon, Théo, et al. "Complex embeddings for simple link prediction." International conference on machine learning. PMLR, 2016.
[3] Sun, Zhiqing, et al. "Rotate: Knowledge graph embedding by relational rotation in complex space." arXiv preprint arXiv:1902.10197 (2019).
[4] M. Ribeiro - “Why Should I Trust You?” Explaining the Predictions of Any Classifier - https://dl.acm.org/doi/pdf/10.1145/2939672.2939778
[5] S. Lundberg - A Unified Approach to Interpreting Model Predictions - https://www.semanticscholar.org/paper/A-Unified-Approach-to-Interpreting-Model-Lundberg-Lee/442e10a3c6640ded9408622005e3c2a8906ce4c2 

Happy doctor supporting positive child with cancer wearing headscarf
(c) Adobe Stock 226717464

Team: Michelle Tang, PD Dr. Anke Bergmann

Die akute lymphoblastische Leukämie der B-Generationen (B-ALL, engl.: B-progenitor acute lymphoblastic leukemia) ist die häufigste pädiatrische Malignität. Next Generation Sequencing (NGS)-Technologien haben Einzug in die Routinediagnostik gehalten. Unter ihnen ist die kosteneffektive gezielte RNA-Sequenzierung besonders attraktiv. Wir analysierten die gezielte RNA-Sequenzierung von ~1.500 pädiatrischen ALL-Patienten aus den deutschen pädiatrischen ALL-Studiengruppen.  Wir kombinieren UMAP (Uniform Manifold Approximation and Projection) und überwachte Algorithmen des maschinellen Lernens, um ein interaktives Tool zur Visualisierung und Vorhersage von diagnostischen Untergruppen zu entwickeln. Wir erforschen eine Vielzahl von maschinellen Lerntechniken, einschließlich über Gennetzwerke informierte neuronale Netze, um unser Vorhersagemodell zu erstellen. Das Tool hilft bei der Stratifizierung von Patienten ohne aberrante Fusion oder Aneudiploidie, bei der Validierung konventioneller diagnostischer Methoden und bei der Entdeckung neuer Untergruppen. Für die Zukunft planen wir, ein solches KI-gestütztes Diagnosewerkzeug auf weitere klinische, transkriptomische und epigenetische Daten auszuweiten. Der vorgeschlagene Arbeitsablauf wird die derzeitige diagnostische Routine erheblich ergänzen, den Patienten bessere Behandlungsmöglichkeiten bieten und den Weg für die personalisierte Onkologie ebnen.Accordion Sample Description

Man with Parkinsons disease

Team: Soumyadeep Roy, Salomon Kabongo Kabenamualu, Prof. Niloy Ganguly, Prof. Dr. Helge Frieling, Dr. Stefanie Mücke, Dominik Wolff

Im Projekt "Big Data in Psychiatric Disorders" arbeitet Prof. Dr. Helge Frieling von der Klinik für Psychiatrie, Sozialpsychiatrie und Psychotherapie (MHH) gemeinsam mit dem Leibniz AI Lab an den Schwerpunkten Schizophrenie und neurodegenerative Erkrankungen. Im ersten Teilprojekt werden genetische Informationen von rund 50.000 Patienten mit der Diagnose Schizophrenie mittels künstlicher Intelligenz ausgewertet, um mögliche Subtypen zu identifizieren. Die Hypothese dabei ist, dass Schizophrenie als Phänotyp auf einer Vielzahl von Ursachen beruht, die eine differenzierte Diagnose und Therapie erfordern. Wir werden uns auf dieses Projekt konzentrieren und haben die Formalitäten der Datenanforderung abgeschlossen. Allerdings stehen die Daten vom NIMH noch aus.

Daher arbeiten wir an der Subtypisierung von Patienten mit der Parkinson-Krankheit, einer neurodegenerativen Erkrankung, unter Verwendung klinischer und genetischer Daten. Die meisten Arbeiten befassen sich mit der Subtypisierung von Parkinson-Patienten anhand der motorischen Symptome und berücksichtigen in der Regel die ältere Bevölkerung (über 60 Jahre). In jüngster Zeit beziehen Forscher auch nicht-motorische Symptome in die Definition von Patientensubtypen ein, da nicht-motorische Symptome häufig der Entwicklung klassischer motorischer Anzeichen vorausgehen und wesentlich zur Gesamtprognose beitragen. Konkret planen wir, bei jüngeren Morbus-Parkinson-Patienten (unter 60 Jahren) anhand von klinischen und genetischen Daten Patientensubtypen zu identifizieren. Wir sind auch an Patienten mit Begleiterkrankungen wie Schizophrenie und schweren Depressionen interessiert. Wir haben ein binäres Klassifikationsmodell entwickelt, mit dem wir vorhersagen können, ob ein Patient an Morbus Parkinson leidet oder nicht. Wir verwenden den trainierten Entscheidungsbaum (decision tree), um die Patientensubtypen zu bestimmen; dies ist der erste Ansatz, den wir verfolgen, um die Einschränkung zu überwinden, dass die Subtypkennzeichnungen der Patienten nicht verfügbar sind. Derzeit führen wir eine Studie zur Charakterisierung der Subtypen von Parkinson-Patienten anhand klinischer Daten durch. In Zukunft planen wir, diese klinischen Patientensubtypen anhand ihrer Genotypdaten weiter zu charakterisieren. In diesem Sinne erforschen wir derzeit einen zweiten Ansatz für die Subtypisierung von Patienten, bei dem wir die Patienten direkt anhand ihrer Genotypdaten (SNP-Daten) clustern.

Doctors in ICU discussing

Team: Leonie Basso, Jingge Xiao, Seham Nasr, Dr. Zhao Ren, Prof. Antje Wulff, PD. Dr. Thomas Jack, PD. Dr. Henning Rathert, Marcel Mast, Prof. Michael Marschollek, Prof. Wolfgang Nejdl

Im Projekt "Anwendungsfall Pädiatrische Intensivstation (PICU, engl. Pediatric Intensive Care Unit)" haben Professorin Antje Wulff, PD Dr. Thomas Jack, PD. Dr. Henning Rathert, Marcel Mast und Prof. Michael Marschollek von der Medizinischen Hochschule Hannover gemeinsam mit dem Leibniz AI Lab an dem Ziel, Organdysfunktionen auf PICUs automatisch zu erkennen. Aufgrund der unmittelbaren Entscheidungsfindung mit hohem Risiko und hohem Stress für Kliniker auf Intensivstationen, einer datenintensiven Umgebung, ist es unerlässlich, automatische Entscheidungsfindungsmodelle mit dem neuesten Stand des maschinellen Lernens und der Deep-Learning-Topologien zu entwickeln; dadurch wird die Entwicklung von Echtzeitmodellen für die Entscheidungsfindung gefördert und der Druck auf die Kliniker gemindert. Darüber hinaus gibt es bei der Entscheidungsfindung in der PICU mehrere Schwierigkeiten: i) Verschiedene Krankheiten dominieren bestimmte Altersgruppen von 0 bis 18 Jahren, und ii) normative Werte sind in verschiedenen Altersgruppen sehr unterschiedlich. Es gibt jedoch nur wenige Forschungsstudien, die sich mit der Analyse der auf PICU-Stationen erhobenen Daten befassen. In diesem Zusammenhang konzentriert sich das Projekt PICU Use Case auf die Vorhersage von Organdysfunktionen auf der Grundlage von PICU-Daten. Es gibt zwei Hauptbereiche, die in diesem Projekt geplant sind. Im Folgenden werden die beiden Zweige vorgestellt.

i) Wir werden uns auf die Verarbeitung der klinischen Daten konzentrieren, die hauptsächlich Vitalparameter (z. B. Atemfrequenz, Herzfrequenz usw.), Laborparameter (z. B. Leukozyten) und Patientendaten (z. B. Größe, Gewicht usw.) enthalten.

ii) Es wird eine neue Datenbank mit Kurvenformdaten (z. B. Elektrokardiogramm) von den bettseitigen Monitoren erfasst. Der Benchmark wird eingerichtet, wenn die Daten gesammelt und vorverarbeitet sind ( zum Beispiel Anonymisierung), und es werden eine Reihe von Ansätzen des maschinellen Lernens und des Deep Learning angewendet.

Zusammenfassend lässt sich sagen, dass die Forschung im Rahmen dieses Projekts verwandte Forschungsstudien über die Anwendung von KI auf der Intensivstation erleichtern soll.

COVID-19, eine durch SARS-CoV2 verursachte Krankheit, kann viele verschiedene Formen annehmen, die in ihrem klinischen Schweregrad von leichten oder asymptomatischen Erkrankungen bis hin zu akuten Zuständen wie ARDS ("acute respiratory distress syndrome", d. h. akutes Atemnotsyndrom) und Tod reichen. Mehrere Studien haben bereits gezeigt, dass neben demografischen Faktoren und Vorerkrankungen auch eine genetische Veranlagung eine wichtige Rolle bei der Krankheitsentwicklung spielen kann. Um die Pathophysiologie und den Verlauf von COVID-19 besser zu verstehen, sammeln Kliniker und Forscher der Medizinischen Hochschule Hannover (MHH) seit Beginn der Pandemie Patientenproben und Daten in der vom Niedersächsischen Ministerium für Wissenschaft und Kultur (MWK) finanzierten COVID-19-Biobank.

An den gesammelten Bioproben wurden umfangreiche molekulare Charakterisierungen durchgeführt, insbesondere an Material von Patienten mit schweren Krankheitsverläufen, die intensivmedizinisch betreut und beatmet werden mussten. Zu diesen globalen Analysen gehören die Sequenzierung des Patientengenoms, die Genexpression und der Methylierungszustand bestimmter Basen im Genom (Epigenom). Ergänzt werden diese Daten durch hochauflösende optische Analysen struktureller DNA-Varianten, die mit einem erhöhten Krankheitsrisiko in Verbindung gebracht werden können. Darüber hinaus wurde von der Hannover Unified Biobank (HUB) in Zusammenarbeit mit der Abteilung Pneumologie der MHH ein breiter klinischer Datensatz zu allen Patienten erhoben, der Informationen über die Vorerkrankungen, den Schweregrad der Erkrankung, therapeutische Maßnahmen, Komplikationen und den Krankheitsverlauf der COVID-19-Patienten enthält.

Um diese umfangreiche Sammlung von molekularen und klinischen Daten, die im Rohzustand bereits über 14 TB umfasst, in einer integrativen Analyse zusammenzuführen, arbeitet die HUB mit Wissenschaftlern des L3S Future Laboratory und Prof. Yang Li vom Helmholtz-Zentrum für Infektionsforschung (HZI) zusammen. Ziel der integrativen Datenanalyse ist es, die verschiedenen Datenschichten zusammenzuführen und prognostische molekulare Marker oder frühe Krankheitsmuster zu identifizieren, die mit dem weiteren Krankheitsverlauf in Verbindung stehen.


Seminare



Publikationen


[2024] [2023] [2022] [2021] [2020] [2019] [2018] [2017] [2016] [2015] [2014]

2024

  • Adhisantoso, Y. G., Cheung, P., and {Ö}zt{ü}rk, {Ü}nsal. (2024)Study on the Verification and Enhancement of the MPEG-G Part 2 Specification - m67352, ISO/IEC JTC 1/SC 29/WG 8.
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  • N{ü}bel, C., Dockhorn, A., and Mostaghim, S. (2024)Match Point AI: A Novel AI Framework for Evaluating Data-Driven Tennis Strategies. In Proceedings of the Conference on Games 2024, pp. 1–4.
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  • Fuchs, R., Gieseke, R., and Dockhorn, A. (2024)Personalized Dynamic Difficulty Adjustment - Imitation Learning Meets Reinforcement Learning. In Proceedings of the IEEE Conference on Games 2024, pp. 1–2.
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  • Hirche, C. (2024)Quantum Doeblin coefficients: A simple upper bound on contraction coefficients. In preprint.
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  • Rosenhahn, B., and Hirche, C. (2024)Quantum Normalizing Flows for Anomaly Detection, preprint.
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  • M{ü}ntefering, F., Adhisantoso, Y. G., Chandak, S., Ostermann, J., Hernaez, M., and Voges, J. (2024)Genie: the first open-source ISO/IEC encoder for genomic data, Communications Biology 7.
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  • Hinrichs, R. (2024)Kompression der Erregungsmuster von Cochlea-Implantaten, VDI Verlag.
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  • Xu, R., Beltran-Gutierrez, R. E., K{ä}ding, M., Lange, A., Marx, S., and Ostermann, J. (2024)Frequency dependent amplitude response of different couplant materials for mounting piezoelectric sensors, NDT \& E International 141.
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  • Lange, A., Xu, R., K{ä}ding, M., Marx, S., and Ostermann, J. (2024)Matched Filter for Acoustic Emission Monitoring in Noisy Environments: Application to Wire Break Detection (accepted), acoustics, Special Issue: Advances in Industrial and Research Applications of Acoustic Emission Testing.
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  • Xu, L., Perez-Liebana, D., and Dockhorn, A. (2024)Strategy Game-Playing with Size-Constrained State Abstraction. In Proceedings of the IEEE Conference on Games 2024, pp. 1–8.
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  • Xu, L., Liu, Z., Dockhorn, A., Perez-Liebana, D., Wang, J., Song, L., and Bian, J. (2024)Higher Replay Ratio Empowers Sample-Efficient Multi-Agent Reinforcement Learning. In Proceedings of the IEEE Conference on Games 2024, pp. 1–8.
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  • Adhisantoso, Y. G., and Cheung, P. (2024)Input to Requirements about MPEG-G Profiles - m68659, ISO/IEC JTC 1/SC 29/WG 8.
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  • Adhisantoso, Y. G., Cheung, P., {Ö}zt{ü}rk, {Ü}nsal, Hernaez, M., Krasinski, R., M{ü}ntefering, F., and Voges, J. (2024)Recommendations of the AHG on MPEG-G Profiles - m67350, ISO/IEC JTC 1/SC 29/WG 8.
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  • Maharlou, H., B{ö}ssel-Debbert, N., Lucht, M., Maier, H. B., M{ü}cke, S., M{ü}ntefering, F., Neuhaus, B., Prokein, J., Reif-Leonhard, C., Voges, J., Weber, H., Weihs, A., Frieling, H., and Oeltze-Jafra, S. (2024)Cooperative Design of a Dashboard for Monitoring the P4D Cohort Study on Major Depression. In EuroVisPosters2024.
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  • Adhisantoso, Y. G., K{ö}rner, T., M{ü}ntefering, F., Ohm, O., and Voges, J. (2024)HiCMC: High-Efficiency Contact Matrix Compressor (accepted). In BMC Bioinformatics.
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  • Chen, Y.-H., Gao, Z.-L., Yao, Y.-C., Ho, K.-W., Benjak, M., and Peng, W.-H. (2024)Bitstream Generation and Bit Rate Fitting Results of MaskCRT for CVQM HD Sequences, 15th Meeting of ISO/IEC JTC 1/SC 29/AG 5 Document m68079.
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  • Benjak, M., and Ostermann, J. (2024)Comparison of VVC and LCEVC with a wide set of configurations for 4K content, 16th Meeting of ISO/IEC JTC 1/SC 29/WG 4 Document m68908.
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  • Chen, Y.-H., Gao, Z.-L., Benjak, M., and Peng, W.-H. (2024)Response to Call for Learning-Based Video Codecs for Study of Quality Assessment by NYCU and LUH, 14th Meeting of ISO/IEC JTC 1/SC 29/AG 5 Document m66163.
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  • Chen, Y.-H., Cheng, C.-W., Benjak, M., and Peng, W.-H. (2024)Progress report on MaskCRT, 15th Meeting of ISO/IEC JTC 1/SC 29/AG 5 Document m66976.
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  • Cong, Y., Xu, M., Simon, C., Chen, S., Ren, J., Xie, Y., Perez-Rua, J.-M., Rosenhahn, B., Xiang, T., and He, S. (2024)FLATTEN: optical FLow-guided ATTENtion for consistent text-to-video editing. In International Conference on Learning Representations (ICLR).
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  • Maier, H. B., Neyazi, A., Bundies, G. L., Meyer-Bockenkamp, F., Bleich, S., Pathak, H., Ziert, Y., Neuhaus, B., M{ü}ller, F.-J., Pollmann, I., Illig, T., M{ü}cke, S., M{ü}ller, M., M{ö}ller, B. K., Oeltze-Jafra, S., Kacprowski, T., Voges, J., M{ü}ntefering, F., Scheiber, J., Reif, A., Aichholzer, M., Reif-Leonhard, C., Schmidt-Kassow, M., Hegerl, U., Reich, H., Unterecker, S., Weber, H., Deckert, J., B{ö}ssel-Debbert, N., Grabe, H. J., Lucht, M., and Frieling, H. (2024)Validation of the predictive value of BDNF -87 methylation for antidepressant treatment success in severely depressed patients—a randomized rater-blinded trial, Trials 25.
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  • Kaiser, T., Vladimir, U., and Rosenhahn, B. (2024)CHOTA: A Higher Order Accuracy Metric for Cell Tracking. In European Conference on Computer Vision Workshops (ECCVW).
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  • Adhisantoso, Y. G., Cheung, P., {Ö}zt{ü}rk, {Ü}nsal, Hernaez, M., Krasinski, R., M{ü}ntefering, F., and Voges, J. (2024)Recommendations of the AHG on MPEG-G Profiles - m68661, ISO/IEC JTC 1/SC 29/WG 8.
    BibTeXEndNoteBibSonomy
  • Cong, Y., Xu, M., Simon, C., Chen, S., Ren, J., Xie, Y., Rosenhahn, B., Xiang, T., and He, S. (2024)FLATTEN: optical FLow-guided ATTENtion for consistent text-to-video editing. In International Conference on Learning Representations (ICLR).
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  • Chen, Y.-H., Chen, C.-W., Gao, Z.-L., Benjak, M., and Peng, W.-H. (2024)Results on the Bit Rate Fitting for MaskCRT, 15th Meeting of ISO/IEC JTC 1/SC 29/AG 5 Document m67455.
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  • Chen, Y.-H., Ho, K.-W., Benjak, M., Ostermann, J., and Peng, W.-H. (2024)On the Rate-Distortion-Complexity Trade-offs of Neural Video Coding. In IEEE 26th International Workshop on Multimedia Signal Processing (MMSP).
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  • Apeldoorn, D., Dockhorn, A., and Panholzer, T. (2024)AbstractSwarm Multi-Agent Logistics Competition: Multi-Agent Collaboration for Improving A Priori Unknown Logistics Scenarios. In Proceedings of the Genetic and Evolutionary Computation Conference Companion, pp. 1–2.
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  • Liu, B., Rosenhahn, B., Illig, T., and DeLuca, D. S. (2024)A variational autoencoder trained with priors from canonical pathways increases the interpretability of transcriptome data, PLOS Computational Biology 20, 1–22.
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  • Hinrichs, R., Gerkens, K., Lange, A., and Ostermann, J. (2024)Blind Extraction of Guitar Effects Through Blind System Inversion and Neural Guitar Effect Modeling, EURASIP Journal on Audio, Speech, and Music Processing.
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  • Wallat, J., Jatowt, A., and Anand, A. (2024)Temporal Blind Spots in Large Language Models, ACM International Conference on Web Search and Data Mining (WSDM) (Proceeding, no out yet, Ed.) 17.
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  • Kluger, F., and Rosenhahn, B. (2024)PARSAC: Accelerating Robust Multi-Model Fitting with Parallel Sample Consensus. In AAAI.
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  • Reinders, C., Yang, M. Y., and Rosenhahn, B. (2024)Two Worlds in One Network: Fusing Deep Learning and Random Forests for Classification and Object Detection, Volunteered Geographic Information.
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  • Adhisantoso, Y. G., and Cheung, P. (2024)Study on the Verification and Enhancement of the MPEG-G Part 6 Specification - m67351, ISO/IEC JTC 1/SC 29/WG 8.
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  • Chen, Y.-H., Xie, H.-S., Chen, C.-W., Gao, Z.-L., Benjak, M., Peng, W.-H., and Ostermann, J. (2024)Maskcrt: Masked conditional residual transformer for learned video compression, IEEE Transactions on Circuits and Systems for Video Technology.
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  • Norrenbrock, T., Rudolph, M., and Rosenhahn, B. (2024)Q-SENN: Quantized Self-Explaining Neural Networks. In AAAI Technical Track on Safe, Robust and Responsible AI, pp. 21482–21491.
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  • Adhisantoso, Y. G., and Cheung, P. (2024)Continuation of the MPEG-G Part 6 Specification Verification and Enhancement Study - m68660, ISO/IEC JTC 1/SC 29/WG 8.
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  • Benjak, M., and Ostermann, J. (2024)Comparison between LCEVC and VVC, 15th Meeting of ISO/IEC JTC 1/SC 29/WG 4 Document m67212.
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  • Kruse, M., Rudolph, M., Woiwode, D., and Rosenhahn, B. (2024)SplatPose \& Detect: Pose-Agnostic 3D Anomaly Detection. In Computer Vision and Pattern Recognition Workshops (CVPRW).
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  • Chen, S., Xu, M., Ren, J., Cong, Y., He, S., Xie, Y., Sinha, A., Luo, P., Xiang, T., and Perez-Rua, J.-M. (2024)GenTron: Delving Deep into Diffusion Transformers for Image and Video Generation. In Proc. of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR).
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  • Oguz, M. K., and Dockhorn, A. (2024)Markov Senior - Learning Markov Junior Grammars to Generate User-specified Content. In Proceedings of the IEEE Conference on Games 2024, pp. 1–8.
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  • Jiwatode, M., Schlecht, L., and Dockhorn, A. (2024)Online Optimization of Curriculum Learning Schedules using Evolutionary Optimization. In Proceedings of the Conference on Games 2024, pp. 1–8.
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  • Mahlau, Y., Schubert, F., and Rosenhahn, B. (2024)Mastering Zero-Shot Interactions in Cooperative and Competitive Simultaneous Games. In Proceedings of the 41st International Conference on Machine Learning (ICML).
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  • Xuan, Q. L., Munderloh, M., and Ostermann, J. (2024)Self-supervised Domain Adaptation for Machinery Remaining Useful Life Prediction (accepted), Journal on Reliability Engineering and System Safety, Special Issue: RUL Prediction and System Reliability of Complex Systems.
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  • Tang, M., Antić, Željko, Fardzadeh, P., Pietzsch, S., Schröder, C., Eberhardt, A., van Bömmel, A., Escherich, G., Hofmann, W., Horstmann, M. A., Illig, T., McCrary, J. M., Lentes, J., Metzler, M., Nejdl, W., Schlegelberger, B., Schrappe, M., Zimmermann, M., Miarka-Walczyk, K., Patsorczak, A., Cario, G., Renard, B. Y., Stanulla, M., and Bergmann, A. K. (2024)An artificial intelligence-assisted clinical framework to facilitate diagnostics and translational discovery in hematologic neoplasia, eBioMedicine, Elsevier BV 104, 105171.
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  • Kluger, F., Brachmann, E., Yang, M. Y., and Rosenhahn, B. (2024)Robust Shape Fitting for 3D Scene Abstraction, IEEE Transactions on Pattern Analysis and Machine Intelligence.
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2023

  • Hachmann, H., and Rosenhahn, B. (2023)Human Spine Motion Capture using Perforated Kinesiology Tape. In Computer Vision and Pattern Recognition Workshops (CVPRW).
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  • Cong, Y., Yang, M., and Rosenhahn, B. (2023)RelTR: Relation Transformer for Scene Graph Generation, IEEE transactions on pattern analysis and machine intelligence (TPAMI).
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  • Xu, R., Lange, A., K{ä}ding, M., Marx, S., and Ostermann, J. (2023)Energy spectral analysis of wire breaks in post-tensioned tendons for wind turbines. In 19th EAWE PhD Seminar on Wind Energy, pp. 204–207.
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  • Hinrichs, R., Bilsky, J., and Ostermann, J. (2023)Vector-Quantized Feedback Recurrent Autoencoders for the Compression of the Stimulation Patterns of Cochlear Implants at Zero Delay. In Proceedings of the 24th International Conference on Digital Signal Processing.
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  • Poker, Y., von Hardenberg, S., Hofmann, W., Tang, M., Baumann, U., Schwerk, N., Wetzke, M., Lindenthal, V., Auber, B., Schlegelberger, B., Ott, H., von Bismarck, P., Viemann, D., Dressler, F., Klemann, C., and Bergmann, A. K. (2023)Systematic genetic analysis of pediatric patients with autoinflammatory diseases, Frontiers in Genetics, Frontiers Media {SA} 14.
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  • Dockhorn, A., and Kruse, R. (2023)State and Action Abstraction for Search and Reinforcement Learning Algorithms, Artificial Intelligence in Control and Decision-making Systems 181–198.
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  • Rudolph, M., Wehrbein, T., Rosenhahn, B., and Wandt, B. (2023)Asymmetric Student-Teacher Networks for Industrial Anomaly Detection. In Winter Conference on Applications of Computer Vision (WACV).
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  • D’Souza, J., Mulang’, I. O., and Auer, S. (2023)Ranking facts for explaining answers to elementary science questions, Nat. Lang. Eng. 29, 228–253.
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  • Kuhnke, F. (2023)Unsupervised Domain Adaptation for Real-World Head Pose Estimation from Synthetic Data 144.
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  • Ren, Z., Nguyen, T. T., Chang, Y., and Schuller, B. W. (2023)Fast yet effective speech emotion recognition with self-distillation. In ICASSP.
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  • M{ü}ntefering, F., Ostermann, J., and Voges, J. (2023)BACON: Bacterial Clone Recognition from Metagenomic Sequencing Data, AICPM 2023.
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  • Xie, H.-S., Chen, Y.-H., Peng, W.-H., Benjak, M., and Ostermann, J. (2023)Rate Adaptation for Learned Two-layer B-frame Coding without Signaling Motion Information. In IEEE International Conference on Visual Communications and Image Processing (VCIP).
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  • W{ö}rz, N., Woiwode, D., Sondheim, J., Behrens, D., Rudy, D., and Gl{ü}cksklee, T. (2023)Pflanzenforschung an Bord der ISS, BIOspektrum 29 29, 557.
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  • Adhisantoso, Y. G., and Voges, J. (2023)Cross-check of M62859 Results on Updated CE Results for Annotation Data Indexing Using B-Tree, ISO/IEC JTC 1/SC 29/WG 8.
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  • Kaiser, T., Reinders, C., and Rosenhahn, B. (2023)Compensation Learning in Semantic Segmentation. In Computer Vision and Pattern Recognition Workshops (CVPRW).
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  • Dockhorn, A., Eberhardinger, M., Loiacono, D., Liebana, D. P., and Veltkamp, R. (2023)Pokegen, Human-Game AI Interaction (Dagstuhl Seminar 22251) 12, 39–42.
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  • Awiszus, M., Dockhorn, A., Hoover, A. K., Liapis, A., Lucas, S. M., Eladhari, M. P., Schrum, J., and Volz, V. (2023)Language Models for Procedural Content Generation, Human-Game AI Interaction (Dagstuhl Seminar 22251) 12, 34–37.
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  • Adhisantoso, Y. G., Voges, J., and Ostermann, J. (2023)PEKORA: High-Performance 3D Genome Reconstruction Using K-th Order Spearman’s Rank Correlation Approximation [Talk]. In ISMB/ECCB 2023.
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  • Hinrichs, R., Sitcheu, A. J. Y., and Ostermann, J. (2023)Continuous Sign-Language Recognition using Transformers and Augmented Pose Estimation. In Proceedings of the International Conference on Pattern Recognition Applications and Methods.
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  • Xiao, J., Basso, L., Nejdl, W., Ganguly, N., and Sikdar, S. (2023)IVP-VAE: Modeling EHR Time Series with Initial Value Problem Solvers, arXiv preprint arXiv:2305.06741.
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  • Glandorf*, P., Kaiser*, T., Rosenhahn, B., and (*contributed equally). (2023)HyperSparse Neural Networks: Shifting Exploration to Exploitation through Adaptive Regularization. In International Conference on Computer Vision Workshops (ICCVW).
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  • Roy, S., Wallat, J., Sundaram, S. S., Nejdl, W., and Ganguly, N. (2023)GENEMASK: Fast Pretraining of Gene Sequences to Enable Few-Shot Learning. In Frontiers in Artificial Intelligence and Applications, pp. 2002–2009.
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  • Avetisyan, H., Safikhani, P., and Broneske, D. (2023)Laughing Out Loud – Exploring AI-Generated and Human-Generated Humor, International Conference on Soft Computing, Artificial Intelligence and Applications (SCAI 2023).
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  • Nandy, A., Kapadnis, M. N., Goyal, P., and Ganguly, N. (2023)CLMSM: A Multi-Task Learning Framework for Pre-training on Procedural Text. In The 2023 Conference on Empirical Methods in Natural Language Processing.
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  • Auer, S., Barone, D. A. C., Bartz, C., Cortes, E. G., Jaradeh, M. Y., Karras, O., Koubarakis, M., Mouromtsev, D., Pliukhin, D., Radyush, D., Shilin, I., Stocker, M., and Tsalapati, E. (2023, March)SciQA benchmark: Dataset and {RDF} dump (Version 5), Zenodo.
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  • D’Souza, J., Hrou, M., and Auer, S. (2023)Evaluating Prompt-Based Question Answering for Object Prediction in the Open Research Knowledge Graph. In Database and Expert Systems Applications - 34th International Conference, {DEXA} 2023, Penang, Malaysia, August 28-30, 2023, Proceedings, Part {I} (Strauss, C., Amagasa, T., Kotsis, G., Tjoa, A. M., and Khalil, I., Eds.), pp. 508–515, Springer.
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  • Mohan, A., Benjamins, C., Wienecke, K., Dockhorn, A., and Lindauer, M. (2023)AutoRL Hyperparameter Landscapes. In Second International Conference on Automated Machine Learning, pp. 1–14.
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  • Giglou, H. B., D’Souza, J., and Auer, S. (2023)LLMs4OL: Large Language Models for Ontology Learning. In The Semantic Web - {ISWC} 2023 - 22nd International Semantic Web Conference, Athens, Greece, November 6-10, 2023, Proceedings, Part {I} (Payne, T. R., Presutti, V., Qi, G., Poveda{-}Villal{{ó}}n, M., Stoilos, G., Hollink, L., Kaoudi, Z., Cheng, G., and Li, J., Eds.), pp. 408–427, Springer.
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  • Benjak, M., Chen, Y.-H., Peng, W.-H., and Ostermann, J. (2023)Learning-Based Scalable Video Coding with Spatial and Temporal Prediction. In IEEE International Conference on Visual Communications and Image Processing (VCIP).
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  • Auer, S., Barone, D. A. C., Bartz, C., Cortes, E. G., Jaradeh, M. Y., Karras, O., Koubarakis, M., Mouromtsev, D., Pliukhin, D., Radyush, D., Shilin, I., Stocker, M., and Tsalapati, E. (2023, March)SciQA benchmark: Dataset and {RDF} dump (Version 1.0.1), Zenodo.
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  • Cong, Y., Yi, J., Rosenhahn, B., and Yang, M. (2023)SSGVS: Semantic Scene Graph-to-Video Synthesis. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops.
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  • L{ü}dtke, U., Bornman, J., de Wet, F., Heid, U., Ostermann, J., Rumberg, L., der Linde, J. V., and Ehlert, H. (2023)Multidisciplinary Perspectives on Automatic Analysis of Children’s Language Samples: Where Do We Go from Here?, Folia Phoniatrica et Logopaedica 75, 1–12.
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  • Gebauer, C., Rumberg, L., Ehlert, H., L{ü}dtke, U., and Ostermann, J. (2023)Exploiting Diversity of Automatic Transcripts from Distinct Speech Recognition Techniques for Children’s Speech. In Accepted to Interspeech 2023.
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  • Liapis, A., Awiszus, M., Champandard, A. J., Cook, M., Denisova, A., Dockhorn, A., Thompson, T., and Zhu, J. (2023)Artificial Intelligence for Audiences, Human-Game AI Interaction (Dagstuhl Seminar 22251) 12, 50–54.
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  • Cook, M., Awiszus, M., Cakmak, D., Denisova, A., Dockhorn, A., Harteveld, C., Liapis, A., Eladhari, M. P., Liebana, D. P., Rombout, L., and Thompson, T. (2023)AI for Romantic Comedies, Human-Game AI Interaction (Dagstuhl Seminar 22251) 12, 37–39.
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  • Ehlert, H., Beaulac, E., Wallbaum, M., Gebauer, C., Rumberg, L., Ostermann, J., and L{ü}dtke, U. (2023)Collecting and Annotating Natural Child Speech Data – Challenges and Interdisciplinary Perspectives. In Elektronische Sprachsignalverarbeitung (ESSV), pp. 72–78.
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  • Rumberg, L., Gebauer, C., Ehlert, H., Wallbaum, M., L{ü}dtke, U., and Ostermann, J. (2023)Uncertainty Estimation for Connectionist Temporal Classification Based Automatic Speech Recognition. In Accepted to Interspeech 2023.
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  • Hussein, H., Farfar, K. E., Oelen, A., Karras, O., and Auer, S. (2023)Increasing Reproducibility in Science by Interlinking Semantic Artifact Descriptions in a Knowledge Graph. In Leveraging Generative Intelligence in Digital Libraries: Towards Human-Machine Collaboration - 25th International Conference on Asia-Pacific Digital Libraries, {ICADL} 2023, Taipei, Taiwan, December 4-7, 2023, Proceedings, Part {II} (Goh, D. H.- }Lian, Chen, S.- }Jiun, and Tuarob, S., Eds.), pp. 220–229, Springer.
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  • Papadakis, E., Baryannis, G., Batsakis, S., Adamou, M., Huang, Z., and Antoniou, G. (2023)ADHD-KG: A Knowledge Graph of Attention Deficit Hyperactivity Disorder, Health Information Science and Systems.
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  • Safikhani, P., and Broneske, D. (2023)Enhancing AutoNLP with fine-tuned BERT models: An evaluation of text representation methods for AutoPyTorch., International Conference on Machine Learning Techniques and NLP 13.
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  • Schier, M., Reinders, C., and Rosenhahn, B. (2023)Learned Fourier Bases for Deep Set Feature Extractors in Automotive Reinforcement Learning. In 2023 IEEE 26th International Conference on Intelligent Transportation Systems (ITSC), p. to appear.
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  • Schubert, F., Benjamins, C., D{ö}hler, S., Rosenhahn, B., and Lindauer, M. (2023)POLTER: Policy Trajectory Ensemble Regularization for Unsupervised Reinforcement Learning, Transactions on Machine Learning Research.
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  • Roy, S., Ganguly, N., Sural, S., and Rudra, K. (2023)Interpretable Clinical Trial Search using Pubmed Citation Network. In 2023 IEEE International Conference on Digital Health (ICDH), pp. 328–338.
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  • Rohlfing, C., Meyer, T., Schneider, J., and Voges, J. (2023)Python Wrapper for Context-based Adaptive Binary Arithmetic Coding. In 2023 IEEE International Conference on Visual Communications and Image Processing (VCIP).
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  • Basso, L., Ren, Z., and Nejdl, W. (2023)Efficient ECG-Based Atrial Fibrillation Detection via Parameterised Hypercomplex Neural Networks. In 2023 31st European Signal Processing Conference (EUSIPCO), pp. 1375–1379.
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  • Antoniou, G., and Batsakis, S. (2023)Defeasible Reasoning with Large Language Models–Initial Experiments and Future Directions. In Proceedings of the17th International Rule Challenge, RuleML 2023, p. 7687.
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  • Xu, L., Dockhorn, A., and Perez-Liebana, D. (2023)Elastic Monte Carlo Tree Search, IEEE Transactions on Games.
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  • Tang, M., Antic, Z., Fardzadeh, P., Schröder, C., Pietzsch, S., Lentes, J., Hofmann, W., von Wolfggersdorff, L., Zimmerman, M., Horstmann, M., Nejdl, W., Cario, G., Stanulla, M., and Bergmann, A. K. (2023)A machine learning based clinical platform for cancer subtyping and data integration in hematological malignancies, Annals of Oncology 34, S550.
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  • Gebauer, C., Rumberg, L., and Ostermann, J. (2023)Pronunciation Modeling for Children’s Speech. In Elektronische Sprachsignalverarbeitung (ESSV), pp. 79–86.
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  • Zhu, J., Awiszus, M., Cook, M., Dockhorn, A., Eberhardinger, M., Loiacono, D., Lucas, S. M., Matran-Fernandez, A., Liebana, D. P., Thompson, T., and Veltkamp, R. (2023)Explainable AI for Games, Human-Game AI Interaction (Dagstuhl Seminar 22251) 12, 73–75.
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  • Safikhani, P., Avetisyan, H., F{ö}ste-Eggers, D., and Broneske, D. (2023)Automated occupation coding with hierarchical features: A data-centric approach to classification with pre-trained language models., Discover Artificial Intelligence.
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  • Rabby, G., D’Souza, J., Oelen, A., Dvorackova, L., Sv{{á}}tek, V., and Auer, S. (2023)Impact of {COVID-19} research: a study on predicting influential scholarly documents using machine learning and a domain-independent knowledge graph, J. Biomed. Semant. 14, 18.
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  • Ekaputra, F. J., Llugiqi, M., Sabou, M., Ekelhart, A., Paulheim, H., Breit, A., Revenko, A., Waltersdorfer, L., Farfar, K. E., and Auer, S. (2023)Describing and Organizing Semantic Web and Machine Learning Systems in the SWeMLS-KG. In The Semantic Web - 20th International Conference, {ESWC} 2023, Hersonissos, Crete, Greece, May 28 - June 1, 2023, Proceedings (Pesquita, C., Jim{{é}}nez{-}Ruiz, E., McCusker, J. P., Faria, D., Dragoni, M., Dimou, A., Troncy, R., and Hertling, S., Eds.), pp. 372–389, Springer.
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  • Roy, S., Wallat, J., Sundaram, S. S., Nejdl, W., and Ganguly, N. (2023)GeneMask: Fast Pretraining of Gene Sequences to Enable Few-Shot Learning, CoRR abs/2307.15933.
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  • Pestel-Schiller, U., Busch, J., Meinicke, P.-R., and Ostermann, J. (2023)Gain Adapted Quantization in HEVC Coding Applied to Drone Remote Sensing. In 13th Workshop on Hyperspectral Imaging and Signal Processing: Evolution in Remote Sensing (WHISPERS).
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  • Chang, Y., Ren, Z., Nguyen, T. T., Qian, K., and Schuller, B. W. (2023)Knowledge transfer for on-device speech emotion recognition with neural structured learning. In ICASSP.
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  • Kabongo, S., D’Souza, J., and Auer, S. (2023)Zero-Shot Entailment of Leaderboards for Empirical {AI} Research. In {ACM/IEEE} Joint Conference on Digital Libraries, {JCDL} 2023, Santa Fe, NM, USA, June 26-30, 2023, pp. 237–241, {IEEE}.
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  • Wehrbein, T., Rosenhahn, B., Matthews, I., and Stoll, C. (2023)Personalized 3D Human Pose and Shape Refinement. In International Conference on Computer Vision Workshops (ICCVW).
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  • Krause, L. M. K., Manderfeld, E., Gnutt, P., Vogler, L., Wassick, A., Richard, K., Rudolph, M., Hunsucker, K. Z., Swain, G. W., Rosenhahn, B., and Rosenhahn, A. (2023)Semantic Segmentation for Fully Automated Macrofouling Analysis on Coatings after Field Exposure, Biofouling 39, 64–79.
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  • Rosenhahn, B. (2023)Optimization of Sparsity-Constrained Neural Networks as a Mixed Integer Linear Program, Journal of Optimization Theory and Applications 1–24.
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  • Brockmann*, J. T., Rudolph*, M., Rosenhahn, B., Wandt, B., and equal contribution), (*. (2023)The voraus-AD Dataset for Anomaly Detection in Robot Applications, Transactions on Robotics.
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  • Olson, C., Wagner, L., and Dockhorn, A. (2023)Evolutionary Optimization of Baba Is You Agents. In 2023 IEEE Congress on Evolutionary Computation (CEC), pp. 1–8.
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  • Hachmann, H., and Rosenhahn, B. (2023)Color-aware Deep Temporal Backdrop Duplex Matting System. In MMSys ’23: Proceedings of the 14th ACM Multimedia Systems Conference.
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  • Lee, C.-S., Wang, M.-H., Chen, C.-Y., Yang, F.-J., and Dockhorn, A. (2023)Genetic Assessment Agent for High-School Student and Machine Co-Learning Model Construction on Computational Intelligence Experience. In 2023 IEEE Congress on Evolutionary Computation, pp. 1–8.
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  • Lange, A., K{ä}ding, M., Xu, R., Marx, S., and Ostermann, J. (2023)Semi-supervised learning for acoustic emission monitoring of tendons in prestressed concrete bridges. In 14th International Workshop on Structural Health Monitoring (IWSHM).
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  • Adhisantoso, Y. G., Voges, J., Rohlfing, C., Tunev, V., Ohm, J.-R., and Ostermann, J. (2023)GVC: Efficient Random Access Compression for Gene Sequence Variations. In BMC Bioinformatics, p. 13.
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  • Jaradeh, M. Y., Singh, K., Stocker, M., Both, A., and Auer, S. (2023)Information extraction pipelines for knowledge graphs, Knowl. Inf. Syst. 65, 1989–2016.
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  • Adhisantoso, Y. G. (2023)Cross-check of Philips’s Response to Core Experiment for Annotation Data Indexing using B-Tree m62224, ISO/IEC JTC 1/SC 29/WG 8.
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  • Schier, M., Reinders, C., and Rosenhahn, B. (2023)Deep Reinforcement Learning for Autonomous Driving Using High-Level Heterogeneous Graph Representations. In International Conference on Robotics and Automation (ICRA), p. to appear.
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  • Rosenhahn, B., and Osborne, T. (2023)Monte Carlo Graph Search for Quantum Circuit Optimization (Accepted), Physical Review A.
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  • Wallat, J., Beringer, F., Anand, A., and Anand, A. (2023)Probing BERT for Ranking Abilities. In Advances in Information Retrieval - 45th European Conference on Information Retrieval, {ECIR} 2023, Dublin, Ireland, April 2-6, 2023, Proceedings, Part {II} (Kamps, J., Goeuriot, L., Crestani, F., Maistro, M., Joho, H., Davis, B., Gurrin, C., Kruschwitz, U., and Caputo, A., Eds.), pp. 255–273, Springer.
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  • Fathalla, S., Lange, C., and Auer, S. (2023)An Upper Ontology for Modern Science Branches and Related Entities. In The Semantic Web - 20th International Conference, {ESWC} 2023, Hersonissos, Crete, Greece, May 28 - June 1, 2023, Proceedings (Pesquita, C., Jim{{é}}nez{-}Ruiz, E., McCusker, J. P., Faria, D., Dragoni, M., Dimou, A., Troncy, R., and Hertling, S., Eds.), pp. 436–453, Springer.
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  • Ganguly, N., Fazlija, D., Badar, M., Fisichella, M., Sikdar, S., Schrader, J., Wallat, J., Rudra, K., Koubarakis, M., Patro, G. K., Amri, W. Z. E., and Nejdl, W. (2023)A Review of the Role of Causality in Developing Trustworthy AI Systems.
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  • Kuhnke, F., and Ostermann, J. (2023)Domain Adaptation for Head Pose Estimation Using Relative Pose Consistency, IEEE Transactions on Biometrics, Behavior, and Identity Science.
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  • Benjamins, C., Eimer, T., Schubert, F., Mohan, A., D{ö}hler, S., Biedenkapp, A., Rosenhahn, B., Hutter, F., and Lindauer, M. (2023)Contextualize Me - The Case for Context in Reinforcement Learning, Transactions on Machine Learning Research.
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2022

  • Norrenbrock, T., Marco, R., and Rosenhahn, B. (2022)Take 5: Interpretable Image Classification with a Handful of Features. In Progress and Challenges in Building Trustworthy Embodied AI @NeurIPS.
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  • Reinders, C., Schubert, F., and Rosenhahn, B. (2022)ChimeraMix: Image Classification on Small Datasets via Masked Feature Mixing. In Arxiv Preprint.
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  • Kiesel, J., Alshomary, M., Handke, N., Cai, X., Wachsmuth, H., and Stein, B. (2022)Identifying the Human Values behind Arguments. In Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics, pp. 4459–4471.
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  • Alshomary, M., Rieskamp, J., and Wachsmuth, H. (2022)Generating Contrastive Snippets for Argument Search. In Proceedings of the 9th International Conference on Computational Models of Argument, pp. 21–31.
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  • Wachsmuth, H., and Alshomary, M. (2022)“Mama Always Had a Way of Explaining Things So I Could Understand”: A Dialogue Corpus for Learning How to Explain. In Proceedings of the 29th International Conference on Computational Linguistics, pp. 344–354.
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  • Benjamins, C., Jankovic, A., Raponi, E., Blom, {Koen van der}, Lindauer, M., and Doerr, C. (2022)Towards Automated Design of Bayesian Optimization via Exploratory Landscape Analysis. In 6th Workshop on Meta-Learning at NeurIPS 2022.
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  • Adriaensen, S., Biedenkapp, A., Shala, G., Awad, N., Eimer, T., Lindauer, M., and Hutter, F. (2022)Automated Dynamic Algorithm Configuration, Journal of Artificial Intelligence Research, Morgan Kaufmann Publishers, Inc.
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  • Fehring, L., Hanselle, J., and Tornede, A. (2022)HARRIS: Hybrid Ranking and Regression Forests for Algorithm Selection. In NeurIPS Workshop on Meta Learning (MetaLearn 2022).
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  • Lindauer, M., Eggensperger, K., Feurer, M., Biedenkapp, A., Deng, D., Benjamins, C., Ruhkopf, T., Sass, R., and Hutter, F. (2022)SMAC3: A Versatile Bayesian Optimization Package for Hyperparameter Optimization, Journal of Machine Learning Research 23 (2022) 1–9.
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  • Bondarenko, A., Fr{ö}be, M., Kiesel, J., Syed, S., Gurcke, T., Beloucif, M., Panchenko, A., Biemann, C., Stein, B., Wachsmuth, H., Potthast, M., and Hagen, M. (2022)Overview of Touch{é} 2022: Argument Retrieval: Argument Retrieval: Extended Abstract. In Advances in Information Retrieval (Hagen, M., Verberne, S., Macdonald, C., Seifert, C., Balog, K., N{\o}rv{\aa}g, K., and Setty, V., Eds.) Part 2., pp. 339–346, Springer Science and Business Media Deutschland GmbH, Germany.
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  • Mullick, A., Purkayastha, S., Goyal, P., and Ganguly, N. (2022)A Framework to Generate High-Quality Datapoints for Multiple Novel Intent Detection. In Findings of the Association for Computational Linguistics: {NAACL} 2022, Association for Computational Linguistics.
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  • Poddar, S., Mondal, M., Misra, J., Ganguly, N., and Ghosh, S. (2022)Winds of Change: Impact of {COVID}-19 on Vaccine-Related Opinions of Twitter Users, Proceedings of the International {AAAI} Conference on Web and Social Media, Association for the Advancement of Artificial Intelligence ({AAAI}) 16, 782–793.
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  • Tang, M., Antic, Z., Pietzsch, S., Lentes, J., Hofmann, W., Cario, G., Escherich, G., Udo Zu Stadt, U., Schlegelberger, B., Horstmann, M., Stanulla, M., and Bergmann, A. K. (2022)Analyzing clinical RNAseq data with machine learning models greatly improves the genetic diagnosis in pediatric acute lymphoblastic leukemia. In .
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2021

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2020

  • Hu, T., Iosifidis, V., Liao, W., Zhang, H., Yang, M. Y., Ntoutsi, E., and Rosenhahn, B. (2020)FairNN - Conjoint Learning of Fair Representations for Fair Decisions.. In Discovery Science, pp. 581–595, Springer International Publishing.
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  • Benjak, M., and Ostermann, J. (2020)Applications suitable for AI-based data compression, 1st Meeting of ISO/IEC JTC 1/SC 29/WG 2 Document m55424.
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  • Hartmann, F., Sommer, A., Pestel-Schiller, U., and Osterman, J. (2020)A scheme for stabilizing the image generation for VideoSAR. In 13th European Conference on Synthetic Aperture Radar.
    BibTeXEndNoteBibSonomy
  • Awiszus, M., Schubert, F., and Rosenhahn, B. (2020, October)TOAD-GAN: Coherent Style Level Generation from a Single Example.
    AbstractURLBibTeXEndNoteBibSonomy
  • Kluger, F., Brachmann, E., Ackermann, H., Rother, C., Yang, M. Y., and Rosenhahn, B. (2020)CONSAC: Robust Multi-Model Fitting by Conditional Sample Consensus. In Computer Vision and Pattern Recognition (CVPR).
    URLBibTeXEndNoteBibSonomy
  • Krause, T., and Ostermann, J. (2020)Damage Detection for Wind Turbine Rotor Blades Using Airborne Sound, Structural Control and Health Monitoring.
    URLBibTeXEndNoteBibSonomy
  • Cong, Y., Ackermann, H., Liao, W., Yang, M. Y., and Rosenhahn, B. (2020)NODIS: Neural Ordinary Differential Scene Understanding. In European Conference on Computer Vision (ECCV).
    URLBibTeXEndNoteBibSonomy
  • Krause, L., Koc, J., Rosenhahn, B., and Rosenhahn, A. (2020)Fully Convolutional Neural Network for Detection and Counting of Diatoms on Coatings after Short-Term Field Exposure, Environmental Science and Technology 54, 10022–10030.
    URLBibTeXEndNoteBibSonomy
  • Gebauer, C., and Bennewitz, M. (2020)Penalized Bootstrapping for Reinforcement Learning in Robot Control. In International Conference on Machine Learning and Applications (CMLA).
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  • Minh, C. N. D., Gilani, S. Z., Islam, S., and Suter, D. (2020)Learning Affordance Segmentation: An Investigative Study. In DICTA2020.
    BibTeXEndNoteBibSonomy
  • Cheng, H., Liao, W., Ying, Y. M., Sester, M., and Rosenhahn, B. (2020)MCENET: Multi-Context Encoder Network for Homogeneous Agent Trajectory Prediction in Mixed Traffic. In 23rd International Conference on Intelligent Transportation Systems (ITSC).
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  • Sen, H., Wentong, L., Tavakoli, H. R., Yang, M. Y., Rosenhahn, B., and Pugeault, N. (2020)Image Captioning through Image Transformer. In Asian Conference on Computer Vision (ACCV).
    BibTeXEndNoteBibSonomy
  • Liao, W., Cheng, X., Yang, J., Roth, S., Goesele, M., Yang, M. Y., and Rosenhahn, B. (2020)LR-CNN: Local-aware Region CNN for Vehicle Detection in Aerial Imagery. In XXIV ISPRS Congress, p. 8.
    BibTeXEndNoteBibSonomy
  • Ackermann, H., Meuel, H., Rosenhahn, B., and Ostermann, J. (2020)Verfahren und Vorrichtung zum Aufnehmen eines Digitalbildes 1–12.
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  • Adhisantoso, Y. G., Rohlfing, C., Voges, J., and Ostermann, J. (2020)Extension to method for the coding of genomic variants m55355, ISO/IEC JTC 1/SC 29/WG 8.
    BibTeXEndNoteBibSonomy
  • Gaina, R. D., Balla, M., Dockhorn, A., Montoliu, R., and Perez liebana, D. (2020)TAG : A Tabletop Games Framework. In Joint Proceedings of the AIIDE 2020 Workshops co-located with 16th AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment (AIIDE 2020); CEUR Workshop Proceedings (2020), pp. 1–7.
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  • Tan, D., Maybery, M., Gilani, S. Z., Alvares, G., Mian, A., Suter, D., and Whitehouse, A. (2020)A broad autism phenotype expressed in facial morphology, Translational Psychiatry 10.
    BibTeXEndNoteBibSonomy
  • Meuel, H., and Ostermann, J. (2020)Analysis of Affine Motion-Compensated Prediction in Video Coding, IEEE Transactions on Image Processing 29, 7359–7374.
    URLBibTeXEndNoteBibSonomy
  • Perez-Liebana, D., Dockhorn, A., Grueso, J. H., and Jeurissen, D. (2020)The Design Of “Stratega”: A General Strategy Games Framework, arXiv:2009.05643 1–7.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Kruse, R. (2020)Forward Model Learning for Motion Control Tasks. In 2020 IEEE 10th International Conference on Intelligent Systems (IS), pp. 1–5.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A. (2020)Vorhersagebasierte Suche f{ü}r autonomes Spielen, pp. 69–78, GI.
    URLBibTeXEndNoteBibSonomy
  • Samayoa, Y., and Ostermann, J. (2020)Modified Active Constellation Extension Algorithm for PAPR Reduction in OFDM Systems. In 2020 Wireless Telecommunications Symposium (WTS), p. 5.
    BibTeXEndNoteBibSonomy
  • Wulff, A., Mast, M., Hassler, M., Montag, S., Marschollek, M., and Jack, T. (2020)Designing an openEHR-Based Pipeline for Extracting and Standardizing Unstructured Clinical Data Using Natural Language Processing, Methods Inf Med 59, e64-e78.
    AbstractURLBibTeXEndNoteBibSonomy
  • Wallat, J., Singh, J., and Anand, A. (2020)BERTnesia: Investigating the capture and forgetting of knowledge in BERT.. In Proceedings of the Third BlackboxNLP Workshop on Analyzing and Interpreting Neural Networks for NLP, pp. 174–183, Association for Computational Linguistics, Online.
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  • Eimer, T., Biedenkapp, A., Hutter, F., and Lindauer, M. (2020)Towards Self-Paced Context Evaluations for Contextual Reinforcement Learning. In Workshop on Inductive Biases, Invariances and Generalization in Reinforcement Learning (BIG@ICML’20).
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  • Dockhorn, A., and Kruse, R. (2020)Predicting Cards Using a Fuzzy Multiset Clustering of Decks, International Journal of Computational Intelligence Systems (IJCIS) 13, 1207–1217.
    URLBibTeXEndNoteBibSonomy
  • Scheffner, I., Gietzelt, M., Abeling, T., Marschollek, M., and Gwinner, W. (2020)Patient Survival After Kidney Transplantation: Important Role of Graft-sustaining Factors as Determined by Predictive Modeling Using Random Survival Forest Analysis, Transplantation 104, 1095–1107.
    AbstractBibTeXEndNoteBibSonomy
  • Wallat, J., Singh, J., and Anand, A. (2020)BERTnesia: Investigating the capture and forgetting of knowledge in BERT. In Proceedings of the Third BlackboxNLP Workshop on Analyzing and Interpreting Neural Networks for NLP, BlackboxNLP@EMNLP 2020, Online, November 2020 (Alishahi, A., Belinkov, Y., Chrupala, G., Hupkes, D., Pinter, Y., and Sajjad, H., Eds.), pp. 174–183, Association for Computational Linguistics.
    URLBibTeXEndNoteBibSonomy
  • Hornakova*, A., Henschel*, R., Rosenhahn, B., Swoboda, P., and equal contribution), (*. (2020)Lifted Disjoint Paths with Application in Multiple Object Tracking, Proceedings of the 37th International Conference on Machine Learning (ICML).
    URLBibTeXEndNoteBibSonomy
  • Sen, H., Wentong, L., Rezazadegan Tavakoli, H., Ying Yang, M., Rosenhahn, B., and Pugeault, N. (2020)Image Captioning through Image Transformer. In .
    BibTeXEndNoteBibSonomy
  • Rudolph, M., Wandt, B., and Rosenhahn, B. (2020, August)Same Same But DifferNet: Semi-Supervised Defect Detection with Normalizing Flows..
    AbstractURLBibTeXEndNoteBibSonomy
  • Liu, Z., Pavao, A., Xu, Z., Escalera, S., Ferreira, F., Guyon, I., Hong, S., Hutter, F., Ji, R., Jacques, J., Li, G., Lindauer, M., Luo, Z., Madadi, M., Nierhoff, T., Niu, K., Pan, C., Stoll, D., Treguer, S., Wang, J., Wang, P., Wu, C., Xiong, Y., Zela, A., and Zhang, Y. (2020)Winning solutions and post-challenge analyses of the ChaLearn AutoDL challenge 2019. In HAL.
    URLBibTeXEndNoteBibSonomy
  • Kluger, F., Ackermann, H., Yang, M. Y., and Rosenhahn, B. (2020)Temporally Consistent Horizon Lines. In International Conference on Robotics and Automation (ICRA).
    URLBibTeXEndNoteBibSonomy
  • Reinders, C., and Rosenhahn, B. (2020)Neuronale Netze: Angriffe und Verteidigung - Ich sehe was, was du nicht siehst, iX Developer 2020 – Machine Learning 2.0.
    BibTeXEndNoteBibSonomy
  • Gra{{\"s}}hof, S., Ackermann, H., Brandt, S., and Ostermann, J. (2020)Multilinear Modelling of Faces and Expressions, Transactions on Pattern Analysis and Machine Intelligence (TPAMI).
    URLBibTeXEndNoteBibSonomy
  • Voges, J., Paridaens, T., M{ü}ntefering, F., Mainzer, L. S., Bliss, B., Yang, M., Ochoa, I., Fostier, J., Ostermann, J., and Hernaez, M. (2020)GABAC: an arithmetic coding solution for genomic data, Bioinformatics 36, 2275–2277.
    URLBibTeXEndNoteBibSonomy
  • Gritzner, D., and Ostermann, J. (2020)USING SEMANTICALLY PAIRED IMAGES TO IMPROVE DOMAIN ADAPTATION FOR THE SEMANTIC SEGMENTATION OF AERIAL IMAGES, ISPRS Annals of Photogrammetry, Remote Sensing and Spatial Information Sciences 483–492.
    URLBibTeXEndNoteBibSonomy
  • Samayoa, Y., and Ostermann, J. (2020)Parameter Selection for a Video Communication System based on HEVC and Channel Coding. In IEEE Latin-American Conference on Communications (LATINCOM 2020), p. 5.
    BibTeXEndNoteBibSonomy
  • Dockhorn, A., Saxton, C., and Kruse, R. (2020)Association Rule Mining for Unknown Video Games, Fuzzy Approaches for Soft Computing and Approximate Reasoning: Theories and Applications 257–270.
    URLBibTeXEndNoteBibSonomy
  • Gaina, R. D., Balla, M., Dockhorn, A., Montoliu, R., and Perez-Liebana, D. (2020)Design and Implementation of TAG: A Tabletop Games Framework., arXiv:2009.12065.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Lucas, S. (2020)Local Forward Model Learning for GVGAI Games. In IEEE Conference on Computational Intelligence and Games, CIG, pp. 716–723.
    URLBibTeXEndNoteBibSonomy
  • Zell, P., Rosenhahn, B., and Wandt, B. (2020)Weakly-supervised Learning of Human Dynamics. In European Conference on Computer Vision (ECCV).
    URLBibTeXEndNoteBibSonomy
  • S{ü}dbeck, S., Krause, T., and Ostermann, J. (2020)Non-Line-of-Sight Time-Difference-of-Arrival Localization with Explicit Inclusion of Geometry Information in a Simple Diffraction Scenario. In IEEE MMSP 2020 - IEEE International Workshop on Multimedia Signal Processing.
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  • Speck, D., Biedenkapp, A., Hutter, F., Mattm{ü}ller, R., and Lindauer, M. (2020)Learning Heuristic Selection with Dynamic Algorithm Configuration. In Proceedings of international workshop on Bridging the Gap Between AI Planning and Reinforcement Learning at ICAPS.
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  • Eggensperger, K., Haase, K., M{ü}ller, P., Lindauer, M., and Hutter, F. (2020)Neural Model-based Optimization with Right-Censored Observations. In CoRR.
    URLBibTeXEndNoteBibSonomy
  • Shala, G., Biedenkapp, A., Awad, N., Adriaensen, S., Lindauer, M., and Hutter, F. (2020)Learning Step-Size Adaptation in CMA-ES. In Proceedings of the Sixteenth International Conference on Parallel Problem Solving from Nature ({PPSN}’20).
    URLBibTeXEndNoteBibSonomy
  • {Fayyazifar}, N., {Ahderom}, S., {Suter}, D., {Maiorana}, A., and {Dwivedi}, G. (2020)Impact of Neural Architecture Design on Cardiac Abnormality Classification Using 12-lead ECG Signals. In 2020 Computing in Cardiology, pp. 1–4.
    BibTeXEndNoteBibSonomy
  • Dockhorn, A. (2020)Dissertation: Prediction-based Search for Autonomous Game-Playing, Otto von Guericke University Magdeburg 1–231.
    URLBibTeXEndNoteBibSonomy
  • Adhisantoso, Y. G., Rohlfing, C., Voges, J., and Ostermann, J. (2020)Method for the coding of genotype likelihood of variant m55356, ISO/IEC JTC 1/SC 29/WG 8.
    BibTeXEndNoteBibSonomy
  • Awiszus, M., Schubert, F., and Rosenhahn, B. (2020)TOAD-GAN: Coherent Style Level Generation from a Single Example. In AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment Best Student Paper Award.
    URLBibTeXEndNoteBibSonomy
  • J{ü}rgens, H., Hinrichs, R., and Ostermann, J. (2020)Recognizing Guitar Effects and Their Parameter Settings. In Proceedings of the DAFx2020 (Vol I).
    BibTeXEndNoteBibSonomy
  • Souza, A., Nardi, L., Oliveira, L., Olukotun, K., Lindauer, M., and Hutter, F. (2020)Prior-guided Bayesian Optimization. In arxiv:2006.14608[cs.LG].
    URLBibTeXEndNoteBibSonomy
  • Ostermann, J., and Hinrichs, R. (2020)Links und rechts verbinden, Unimagazin.
    URLBibTeXEndNoteBibSonomy
  • Luo, C., Zhao, P., Chen, C., Qiao, B., Du, C., Zhang, H., Wu, W., Cai, S., He, B., Rajmohan, S., and Lin, Q. (2020)PULNS: Positive-Unlabeled Learning with Effective Negative Sample Selector. In , pp. 8784–8792.
    AbstractURLBibTeXEndNoteBibSonomy
  • Zimmer, L., Lindauer, M., and Hutter, F. (2020)Auto-PyTorch Tabular: Multi-Fidelity MetaLearning for Efficient and Robust AutoDL. In arxiv:2006.13799[cs.LG].
    URLBibTeXEndNoteBibSonomy
  • Biedenkapp, A., Rajan, R., Hutter, F., and Lindauer, M. (2020)Towards TempoRL: Learning When to Act. In Workshop on Inductive Biases, Invariances and Generalization in Reinforcement Learning (BIG@ICML’20).
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  • Feurer, M., Eggensperger, K., Falkner, S., Lindauer, M., and Hutter, F. (2020)Auto-Sklearn 2.0: The Next Generation. In arXiv:2007.04074 [cs.LG].
    URLBibTeXEndNoteBibSonomy
  • Awad, N., Shala, G., Deng, D., Mallik, N., Feurer, M., Eggensperger, K., Biedenkapp, A., Vermetten, D., Wang, H., Carola, D., Lindauer, M., and Hutter, F. (2020)Squirrel: A Switching Hyperparameter Optimizer, arxiv.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., Grueso, J. H., Jeurissen, D., and Perez-Liebana, D. (2020)“Stratega”: A General Strategy Games Framework. In Joint Proceedings of the AIIDE 2020 Workshops co-located with 16th AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment (AIIDE 2020); Artificial Intelligence for Strategy Games, pp. 1–7.
    URLBibTeXEndNoteBibSonomy
  • Denkena, B., Dittrich, M., Lindauer, M., Mainka, and St{ü}renburg, L. (2020)Using AutoML to Optimize Shape Error Prediction in Milling Processes. In Proceedings of 20th Machining Innovations Conference for Aerospace Industry (MIC).
    URLBibTeXEndNoteBibSonomy
  • Henschel, R., von Marcard, T., and Rosenhahn, B. (2020)Accurate Long-Term Multiple People Tracking using Video and Body-Worn IMUs, IEEE Transactions on Image Processing.
    URLBibTeXEndNoteBibSonomy
  • Pestel-Schiller, U., and Ostermann, J. (2020)Interpreter-Based Evaluation of Compressed SAR Images Using JPEG and HEVC Intra Coding: Compression Can Improve Usability. In 13th European Conference on Synthetic Aperture Radar.
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  • Kuhnke, F., Rumberg, L., and Ostermann, J. (2020)Two-Stream Aural-Visual Affect Analysis in the Wild. In 15th IEEE International Conference on Automatic Face and Gesture Recognition (FG 2020), pp. 366–371.
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  • Hu, T., Iosifidis, V., Wentong, L., Hang, Z., Yang, M. Y., Ntoutsi, E., and Rosenhahn, B. (2020)FairNN - Conjoint Learning of Fair Representations for Fair Decisions. In 23rd International Conference on Discovery Science.
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2019

  • Wilbers, D., Rumberg, L., and Stachniss, C. (2019)Approximating marginalization with sparse global priors for sliding window SLAM-graphs.. In 2019 Third IEEE International Conference on Robotic Computing (IRC), pp. 25–31.
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  • Dengel, R., Woiwode, D., Florsch{ü}tz, N., Huber, V., Muller, T., von Pichowski, J., Rabinowitsch, A., Scholz, S., Sch{ü}lein, H., Steinweg, E., Stippel, B., St{ö}ferle, P., Wittekind, I., Wizemann, O., Zaft, A., Zembrot, L., and Griebenow, K. (2019)QUEST ON BEXUS 27. In 24th ESA Symposium on European Rocket \& Balloon Programmes and Related.
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  • Ostermann, J., Denkena, B., Bergmann, B., Schmidt, A., Krause, T., and Voges, J. (2019)Compression of Machine Tool Data, ISO/IEC JTC1/SC29/WG11.
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  • Dockhorn, A., Schwensfeier, T., and Kruse, R. (2019)Fuzzy Multiset Clustering for Metagame Analysis. In Proceedings of the 11th Conference of the European Society for Fuzzy Logic and Technology (EUSFLAT 2019), pp. 536–543.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Mostaghim, S. (2019)Introducing the Hearthstone-AI Competition, arXiv:1906.04238 1–4.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., Lucas, S. M., Volz, V., Bravi, I., Gaina, R. D., and Perez-Liebana, D. (2019)Learning Local Forward Models on Unforgiving Games. In 2019 IEEE Conference on Games (CoG).
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  • Lucas, S. M., Alexander, Dockhorn, V., Gaina, R. D., Bravi, I., Perez-Liebana, D., Mostaghim, S., and Kruse, R. (2019)A Local Approach to Forward Model Learning: Results on the Game of Life Game. In 2019 IEEE Conference on Games (CoG), pp. 1–8.
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2018

  • Dockhorn, A., Tippelt, T., and Kruse, R. (2018)Model Decomposition for Forward Model Approximation. In 2018 IEEE Symposium Series on Computational Intelligence (SSCI), pp. 1751–1757.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Apeldoorn, D. (2018)Forward Model Approximation for General Video Game Learning. In Proceedings of the 2018 IEEE Conference on Computational Intelligence and Games (CIG’18), pp. 425–432.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Kruse, R. (2018)Detecting Sensor Dependencies for Building Complementary Model Ensembles. In Proceedings of the 28. Workshop Computational Intelligence, Dortmund, 29.-30. November 2018, pp. 217–234.
    URLBibTeXEndNoteBibSonomy
  • Sabsch, T., Braune, C., Dockhorn, A., and Kruse, R. (2018)Using a multiobjective genetic algorithm for curve approximation. In 2017 IEEE Symposium Series on Computational Intelligence, SSCI 2017 - Proceedings, pp. 1–6.
    URLBibTeXEndNoteBibSonomy
  • Pichler, E., Bethmann, K., Kelb, C., and Schade, W. (2018)Rapid prototyping of all-polymer AWGs for FBG readout using direct laser lithography, Optics Letters.
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  • Waltermann, C., Bethmann, K., Doering, A., Jjang, Y., Baumann, A. L., Anglemahr, M., and Schade, W. (2018)Multiple off-axis fiber Bragg gratings for 3D shape sensing, Applied Optics.
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  • Dockhorn, A., Frick, M., Akkaya, {Ü}nal, and Kruse, R. (2018)Predicting Opponent Moves for Improving Hearthstone AI. In 17th International Conference on Information Processing and Management of Uncertainty in Knowledge-Based Systems, IPMU 2018, pp. 621–632.
    URLBibTeXEndNoteBibSonomy

2017

  • Dockhorn, A., Doell, C., Hewelt, M., and Kruse, R. (2017)A decision heuristic for Monte Carlo tree search doppelkopf agents. In 2017 IEEE Symposium Series on Computational Intelligence (SSCI), pp. 1–8.
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A., and Kruse, R. (2017)Combining cooperative and adversarial coevolution in the context of pac-man. In 2017 IEEE Conference on Computational Intelligence and Games, CIG 2017, pp. 60–67.
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2016

  • Orighici, R., Bethmann, K., Zywietz, U., Reinhard, C., and Schade, W. (2016)All-polymer arrayed waveguide gratings at 850 nm: design, fabrication and characterization, Optics Letters.
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  • Dockhorn, A., Braune, C., and Kruse, R. (2016)Variable density based clustering. In 2016 IEEE Symposium Series on Computational Intelligence (SSCI), pp. 1–8.
    URLBibTeXEndNoteBibSonomy

2015

  • Dockhorn, A., Braune, C., and Kruse, R. (2015)An Alternating Optimization Approach based on Hierarchical Adaptations of DBSCAN. In 2015 IEEE Symposium Series on Computational Intelligence (SSCI), pp. 749–755.
    URLBibTeXEndNoteBibSonomy
  • Pichler, E., Bethmann, K., Zywietz, U., Reinhard, C., Spad, C., Gleissner, U., Kelb, C., Roth, B., Willer, U., and Schade, W. (2015)Ring resonators in polymer foils for sensing of gaseous species. In Fiber Optic Sensors and Applications.
    BibTeXEndNoteBibSonomy
  • Held, P., Dockhorn, A., Krause, B., and Kruse, R. (2015)Clustering Social Networks Using Competing Ant Hives. In 2015 Second European Network Intelligence Conference, pp. 67–74.
    URLBibTeXEndNoteBibSonomy
  • Held, P., Dockhorn, A., and Kruse, R. (2015)On Merging and Dividing Social Graphs, Journal of Artificial Intelligence and Soft Computing Research 5, 23–49.
    URLBibTeXEndNoteBibSonomy
  • Waltermann, C., Baumann, A. L., Bethmann, K., Doering, A., Koch, J., Angelmahr, m., and Schade, W. (2015)Femtosecond laser processing of evanescence field coupled waveguides in single mode glass fibers for optical 3D shape sensing and navigation. In Fiber Optic Sensors and Applications.
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  • Bethmann, K., Orghici, R., Pichler, E., Zywietz, U., Reinhard, C., Schmidt, T., Gleissner, U., Kelb, C., Roth, B., Willer, U., and Schade, W. (2015)New design for a wavelength demultiplexing device. In Fiber Optic Sensors and Applications.
    BibTeXEndNoteBibSonomy
  • Dockhorn, A. (2015)Master Thesis: Hierarchical Extensions and Cluster Validation Techniques for DBSCAN, Otto von Guericke University Magdeburg 1–80.
    BibTeXEndNoteBibSonomy

2014

  • Held, P., Dockhorn, A., and Kruse, R. (2014)On Merging and Dividing of Barabasi-Albert-graphs. In 2014 IEEE Symposium on Evolving and Autonomous Learning Systems (EALS).
    URLBibTeXEndNoteBibSonomy
  • Dockhorn, A. (2014)Bachelor Thesis: Computergest{ü}tzte Analyse onkologischer Daten mithilfe Graphischer Modelle, Otto von Guericke University of Magdeburg 1–80.
    BibTeXEndNoteBibSonomy
  • Held, P., Dockhorn, A., and Kruse, R. (2014)Generating Events for Dynamic Social Network Simulations. In Information Processing and Management of Uncertainty in Knowledge-Based Systems, pp. 46–55.
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Webapplikation


Unsere Arbeit „A message passing framework with multiple data integration for miRNA-disease association prediction“ wurde in Scientific Reports veröffentlicht. (https://www.nature.com/articles/s41598-022-20529-5).

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