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  • Susu’s publications in our group

Susu Sun

PhD student - University of Tübingen

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After finishing her Master degree at the University of Erlangen-Nuremberg with a Master thesis in the MLMIA group, Susu Sun joined the MLMIA group as a PhD student. Susu works on the broad topic of making neural networks more interpretable. Her immediate focus is on disentangling visual attributes for inherently interpretable medical image classification.” In this project, visual attributes of the medical image such as intensity and shape are disentangled and modeled as independent causal mechanisms. The disentangled attributes are used to train a more robust and interpretable classifier such that the classifier can not only give an accurate prediction but also interpret its prediction with the disentangled attribute.

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Susu’s publications in our group

Subgroup Performance Analysis in Hidden Stratifications

Subgroup Performance Analysis in Hidden Stratifications
Alceu Bissoto, Trung-Dung Hoang, Tim Flühmann, Susu Sun, Christian F. Baumgartner, Lisa M. Koch
Lecture Notes in Computer Science, 594-603 (2025)

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Prototype-Based Multiple Instance Learning for Gigapixel Whole Slide Image Classification

Prototype-Based Multiple Instance Learning for Gigapixel Whole Slide Image Classification
Susu Sun, Dominique van Midden, Geert Litjens, Christian F. Baumgartner
Lecture Notes in Computer Science, 507-517 (2025)

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Label-free concept based multiple instance learning for gigapixel histopathology

Label-free concept based multiple instance learning for gigapixel histopathology
Susu Sun, Leslie Tessier, Frederique Meeuwsen, Clement Grisi, Dominique van Midden, Geert Litjens, Christian F. Baumgartner
arXiv preprint arXiv:2501.02922 (2025)

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Attri-Net: A Globally and Locally Inherently Interpretable Model for Multi-Label Classification Using Class-Specific Counterfactuals

Attri-Net: A Globally and Locally Inherently Interpretable Model for Multi-Label Classification Using Class-Specific Counterfactuals
Susu Sun, Stefano Woerner, Andreas Maier, Lisa M Koch, Christian F. Baumgartner
Journal of Machine Learning for Biomedical Research (MELBA) (2024)

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Right for the Wrong Reason: Can Interpretable ML Techniques Detect Spurious Correlations?

Right for the Wrong Reason: Can Interpretable ML Techniques Detect Spurious Correlations?
Susu Sun, Lisa M. Koch, Christian F. Baumgartner
Lecture Notes in Computer Science, 425-434 (2023)

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Inherently interpretable multi-label classification using class-specific counterfactuals

Inherently interpretable multi-label classification using class-specific counterfactuals
Susu Sun, Stefano Woerner, Andreas Maier, Lisa M Koch, Christian F. Baumgartner
Proceedings of Machine Learning Research, 227, 937-956 (2023)

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