Multiple Instance Learning


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

Synthetic Data Reveals Generalization Gaps in Correlated Multiple Instance Learning

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Oct 29, 2025
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Budgeted Multiple-Expert Deferral

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Oct 30, 2025
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Empirical Bayesian Multi-Bandit Learning

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Oct 30, 2025
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Physics-Guided Conditional Diffusion Networks for Microwave Image Reconstruction

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Oct 29, 2025
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MetaCaDI: A Meta-Learning Framework for Scalable Causal Discovery with Unknown Interventions

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Oct 25, 2025
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Beyond Augmentation: Leveraging Inter-Instance Relation in Self-Supervised Representation Learning

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Oct 25, 2025
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Cross-Paradigm Graph Backdoor Attacks with Promptable Subgraph Triggers

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Oct 26, 2025
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Generalizable Reasoning through Compositional Energy Minimization

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Oct 23, 2025
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Unified Reinforcement and Imitation Learning for Vision-Language Models

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Oct 22, 2025
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RLBoost: Harvesting Preemptible Resources for Cost-Efficient Reinforcement Learning on LLMs

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Oct 22, 2025
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