Every Error has Its Magnitude: Asymmetric Mistake Severity Training for Multiclass Multiple Instance Learning
arXiv cs.CV / 3/17/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- Introduces a mistake-severity-aware training strategy for multiclass MIL to address clinically critical errors in whole slide image diagnosis.
- Builds a hierarchical class structure and optimizes severity-weighted cross-entropy losses to penalize high-severity misclassifications more strongly.
- Enforces hierarchical consistency via probabilistic alignment and applies a semantic feature remix to the instance bag to improve class priority and support multi-symptom clinical cases.
- Proposes an asymmetric Mikel's Wheel-based metric to quantify error severity in medical domains and demonstrates reduced critical errors with demonstrated generalization to non-medical data.
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