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Topological Inductive Bias Fosters Multiple Instance Learning in Data-Scarce Scenarios

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Link to Profile Carsten Marr PI Matchmaking

Carsten Marr

Prof. Dr.

Principal Investigator

Abstract

Multiple instance learning (MIL) is a framework for weakly supervised classification, where labels are assigned to sets of instances, i.e., bags, rather than to individual data points. This paradigm has proven effective in tasks where fine-grained annotations are unavailable or costly to obtain. However, the effectiveness of MIL drops sharply when training data are scarce, such as for rare disease classification. To address this challenge, we propose incorporating topological inductive biases into the data representation space within the MIL framework. This bias introduces a topology-preserving constraint that encourages the instance encoder to maintain the topological structure of the instance distribution within each bag when mapping them to MIL latent space. As a result, our Topology Guided MIL (TG-MIL) method enhances the performance and generalizability of MIL classifiers across different aggregation functions, especially under scarce-data regimes. Our evaluations show average performance improvements of 15.3% for synthetic MIL datasets, 2.8% for MIL benchmarks, and 5.5% for rare anemia classification compared to current state-of-the-art MIL models, where only 17–120 samples per class are available.

article KMR26


Transactions on Machine Learning Research

Feb. 2025.

Authors

S. Kazeminia • C. Marr • B. Rieck

Links

URL GitHub

Research Area

 C1 | Medicine

BibTeXKey: KMR26

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