Multiple Instance Learning


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

Thinking in Scales: Accelerating Gigapixel Pathology Image Analysis via Adaptive Continuous Reasoning

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May 19, 2026
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Beyond Numerical Features: CNN-Driven Algorithm Selection via Contour Plots for Continuous Black-Box Optimization

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May 20, 2026
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Robust Recommendation from Noisy Implicit Feedback: A GMM-Weighted Bayes-label Transition Matrix Framework

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May 20, 2026
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Projecting Latent RL Actions: Towards Generalizable and Scalable Graph Combinatorial Optimization

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May 19, 2026
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Dual-Prompt CLIP with Hybrid Visual Encoders for Occluded Person Re-Identification

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May 19, 2026
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Efficient Lookahead Encoding and Abstracted Width for Learning General Policies in Classical Planning

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May 18, 2026
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Collision-Resistant Single-Pass Method for Unsupervised Fine-Grained Image Hashing

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May 18, 2026
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Collaborating in Multi-Armed Bandits with Strategic Agents

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May 13, 2026
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Are Compact Rationales Free? Measuring Tile Selection Headroom in Frozen WSI-MIL

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May 12, 2026
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CellDX AI Autopilot: Agent-Guided Training and Deployment of Pathology Classifiers

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May 11, 2026
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