Multiple Instance Learning


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

Context-Aware Asymmetric Ensembling for Interpretable Retinopathy of Prematurity Screening via Active Query and Vascular Attention

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Feb 05, 2026
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Reasoning under Ambiguity: Uncertainty-Aware Multilingual Emotion Classification under Partial Supervision

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Feb 05, 2026
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CLEAR-HPV: Interpretable Concept Discovery for HPV-Associated Morphology in Whole-Slide Histology

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Feb 04, 2026
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Live or Lie: Action-Aware Capsule Multiple Instance Learning for Risk Assessment in Live Streaming Platforms

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Feb 03, 2026
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Multi-Scale Global-Instance Prompt Tuning for Continual Test-time Adaptation in Medical Image Segmentation

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Feb 05, 2026
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AtlasPatch: An Efficient and Scalable Tool for Whole Slide Image Preprocessing in Computational Pathology

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Feb 03, 2026
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Multi-View Stenosis Classification Leveraging Transformer-Based Multiple-Instance Learning Using Real-World Clinical Data

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Feb 02, 2026
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A Multi-scale Linear-time Encoder for Whole-Slide Image Analysis

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Feb 02, 2026
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Enabling Progressive Whole-slide Image Analysis with Multi-scale Pyramidal Network

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Feb 02, 2026
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From Inexact Gradients to Byzantine Robustness: Acceleration and Optimization under Similarity

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Feb 03, 2026
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