Multiple Instance Learning


Multiple instance learning is a machine learning paradigm where training data is organized into bags of instances.

PC-MIL: Decoupling Feature Resolution from Supervision Scale in Whole-Slide Learning

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Apr 13, 2026
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LoGo-MR: Screening Breast MRI for Cancer Risk Prediction by Efficient Omni-Slice Modeling

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Apr 13, 2026
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LDEPrompt: Layer-importance guided Dual Expandable Prompt Pool for Pre-trained Model-based Class-Incremental Learning

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Apr 13, 2026
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CoRe-ECG: Advancing Self-Supervised Representation Learning for 12-Lead ECG via Contrastive and Reconstructive Synergy

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Apr 13, 2026
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Do Instance Priors Help Weakly Supervised Semantic Segmentation?

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Apr 13, 2026
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AC-MIL: Weakly Supervised Atrial LGE-MRI Quality Assessment via Adversarial Concept Disentanglement

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Apr 11, 2026
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SIMPLER: H&E-Informed Representation Learning for Structured Illumination Microscopy

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Apr 11, 2026
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Why Supervised Fine-Tuning Fails to Learn: A Systematic Study of Incomplete Learning in Large Language Models

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Apr 11, 2026
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Component-Adaptive and Lesion-Level Supervision for Improved Small Structure Segmentation in Brain MRI

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Apr 09, 2026
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Needle in a Haystack -- One-Class Representation Learning for Detecting Rare Malignant Cells in Computational Cytology

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Apr 09, 2026
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