Multiple Instance Learning


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

On Sample-Efficient Generalized Planning via Learned Transition Models

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Feb 26, 2026
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SAPNet++: Evolving Point-Prompted Instance Segmentation with Semantic and Spatial Awareness

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Feb 25, 2026
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Test-Time Learning of Causal Structure from Interventional Data

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Feb 22, 2026
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Robust Exploration in Directed Controller Synthesis via Reinforcement Learning with Soft Mixture-of-Experts

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Feb 22, 2026
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MacNet: An End-to-End Manifold-Constrained Adaptive Clustering Network for Interpretable Whole Slide Image Classification

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Feb 16, 2026
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Be Wary of Your Time Series Preprocessing

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Feb 19, 2026
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Characterizing the Predictive Impact of Modalities with Supervised Latent-Variable Modeling

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Feb 19, 2026
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Prototype-driven fusion of pathology and spatial transcriptomics for interpretable survival prediction

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Feb 12, 2026
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Time-Archival Camera Virtualization for Sports and Visual Performances

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Feb 16, 2026
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Evolutionary System Prompt Learning can Facilitate Reinforcement Learning for LLMs

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Feb 16, 2026
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