Multiple Instance Learning


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

CellDX AI Autopilot: Agent-Guided Training and Deployment of Pathology Classifiers

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May 11, 2026
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TimeClaw: A Time-Series AI Agent with Exploratory Execution Learning

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May 11, 2026
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Active-SAOOD: Active Sparsely Annotated Oriented Object Detection in Remote Sensing Images

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May 11, 2026
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Zero-Shot Sim-to-Real Robot Learning: A Dexterous Manipulation Study on Reactive Catching

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May 10, 2026
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Skill-R1: Agent Skill Evolution via Reinforcement Learning

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May 10, 2026
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Geometry-Aware State Space Model: A New Paradigm for Whole-Slide Image Representation

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May 06, 2026
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Neck-Learn: Attention-Based Multiple Instance Learning and Ensemble Framework for Ecological Momentary Assessment

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May 04, 2026
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Plug-and-play Class-aware Knowledge Injection for Prompt Learning with Visual-Language Model

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May 07, 2026
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Validation of an AI-based end-to-end model for prostate pathology using long-term archived routine samples

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May 04, 2026
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Cross-Model Consistency of Feature Importance in Electrospinning: Separating Robust from Model-Dependent Features

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May 06, 2026
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