Multiple Instance Learning


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

Unregularized Linear Convergence in Zero-Sum Game from Preference Feedback

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Dec 31, 2025
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HeteroHBA: A Generative Structure-Manipulating Backdoor Attack on Heterogeneous Graphs

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Dec 31, 2025
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WSD-MIL: Window Scale Decay Multiple Instance Learning for Whole Slide Image Classification

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Dec 23, 2025
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Plug In, Grade Right: Psychology-Inspired AGIQA

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Dec 28, 2025
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Breast Cancer Recurrence Risk Prediction Based on Multiple Instance Learning

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Dec 21, 2025
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DeltaMIL: Gated Memory Integration for Efficient and Discriminative Whole Slide Image Analysis

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Dec 22, 2025
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HookMIL: Revisiting Context Modeling in Multiple Instance Learning for Computational Pathology

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Dec 20, 2025
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PathBench-MIL: A Comprehensive AutoML and Benchmarking Framework for Multiple Instance Learning in Histopathology

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Dec 19, 2025
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MambaMIL+: Modeling Long-Term Contextual Patterns for Gigapixel Whole Slide Image

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Dec 19, 2025
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Bring My Cup! Personalizing Vision-Language-Action Models with Visual Attentive Prompting

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Dec 23, 2025
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