Multiple Instance Learning


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

VaCDA: Variational Contrastive Alignment-based Scalable Human Activity Recognition

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May 08, 2025
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Interactive Instance Annotation with Siamese Networks

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May 06, 2025
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ProDisc-VAD: An Efficient System for Weakly-Supervised Anomaly Detection in Video Surveillance Applications

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May 04, 2025
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Self-Supervision Enhances Instance-based Multiple Instance Learning Methods in Digital Pathology: A Benchmark Study

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May 02, 2025
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3DWG: 3D Weakly Supervised Visual Grounding via Category and Instance-Level Alignment

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May 03, 2025
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AWARE-NET: Adaptive Weighted Averaging for Robust Ensemble Network in Deepfake Detection

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May 01, 2025
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Improving Group Fairness in Knowledge Distillation via Laplace Approximation of Early Exits

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May 02, 2025
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VCM: Vision Concept Modeling Based on Implicit Contrastive Learning with Vision-Language Instruction Fine-Tuning

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Apr 28, 2025
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A Spatially-Aware Multiple Instance Learning Framework for Digital Pathology

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Apr 24, 2025
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Token-Level Prompt Mixture with Parameter-Free Routing for Federated Domain Generalization

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Apr 29, 2025
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