Multiple Instance Learning


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

From Patches to Patients: A study of the tile-to-slide performance transferability in Digital Pathology

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Jun 09, 2026
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GD-MIL: Grade-Disentangled Multiple Instance Learning for Multimodal Biochemical Recurrence Prediction in Prostate Cancer

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Jun 08, 2026
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Democratising Camera Trap AI: An Open-Source Model for Detecting UK Mammals

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Jun 09, 2026
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Vector Map as Language: Toward Unified Remote Sensing Vector Mapping

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Jun 09, 2026
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Self-Supervised Vision Transformers for CBCT-Based Detection of Temporomandibular Joint Osteoarthritis

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Jun 06, 2026
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LRMIL: Efficient Low-Resolution Multiple Instance Learning via High-Resolution Knowledge Distillation for Whole Slide Image Classification

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Jun 05, 2026
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In-Context Multiple Instance Learning

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Jun 04, 2026
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DALE-CT: Depth-Aware Foundation Models for Computed Tomography

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Jun 05, 2026
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Symb-xMIL: Symbolic Explanations for Multiple Instance Learning in Digital Pathology

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Jun 04, 2026
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Do Foundation Models See Biology? Evaluating Attention Coherence with Spatial Transcriptomics in Glioblastoma

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Jun 03, 2026
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