Multiple Instance Learning


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

Hierarchical Prototype-based Domain Priors for Multiple Instance Learning in Multimodal Histopathology Analysis

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Apr 27, 2026
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Sample-efficient Neuro-symbolic Proximal Policy Optimization

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Apr 28, 2026
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Explanation Quality Assessment as Ranking with Listwise Rewards

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Apr 27, 2026
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Weakly Supervised Multicenter Nancy Index Scoring in Ulcerative Colitis Using Foundation Models

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Apr 26, 2026
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Negative Ontology of True Target for Machine Learning: Towards Evaluation and Learning under Democratic Supervision

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Apr 27, 2026
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Learning to Identify Out-of-Distribution Objects for 3D LiDAR Anomaly Segmentation

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Apr 26, 2026
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Clinically-Informed Modeling for Pediatric Brain Tumor Classification from Whole-Slide Histopathology Images

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Apr 22, 2026
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Volume Transformer: Revisiting Vanilla Transformers for 3D Scene Understanding

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Apr 21, 2026
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Model-Agnostic Meta Learning for Class Imbalance Adaptation

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Apr 20, 2026
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Spatiotemporal Link Formation Prediction in Social Learning Networks Using Graph Neural Networks

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Apr 20, 2026
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