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DiscoBoxThe Official PyTorch Implementation of DiscoBox.
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wrenchWRENCH: Weak supeRvision bENCHmark
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reefAutomatically labeling training data
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MCIS wsssCode for ECCV 2020 paper (oral): Mining Cross-Image Semantics for Weakly Supervised Semantic Segmentation
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WeSTClass[CIKM 2018] Weakly-Supervised Neural Text Classification
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WSCNNTDSaliency[BMVC17] Weakly Supervised Saliency Detection with A Category-Driven Map Generator
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RIBReducing Information Bottleneck for Weakly Supervised Semantic Segmentation (NeurIPS 2021)
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WeFEND-AAAI20Dataset for paper "Weak Supervision for Fake News Detection via Reinforcement Learning" published in AAAI'2020.
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HiGitClassHiGitClass: Keyword-Driven Hierarchical Classification of GitHub Repositories (ICDM'19)
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ASTRASelf-training with Weak Supervision (NAACL 2021)
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just-ask[TPAMI Special Issue on ICCV 2021 Best Papers, Oral] Just Ask: Learning to Answer Questions from Millions of Narrated Videos
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GAL-fWSDGenerative Adversarial Learning Towards Fast Weakly Supervised Detection
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MetaCatMinimally Supervised Categorization of Text with Metadata (SIGIR'20)
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TS-CAMCodes for TS-CAM: Token Semantic Coupled Attention Map for Weakly Supervised Object Localization.
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Awesome-Weak-Shot-LearningA curated list of papers, code and resources pertaining to weak-shot classification, detection, and segmentation.
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deviation-networkSource code of the KDD19 paper "Deep anomaly detection with deviation networks", weakly/partially supervised anomaly detection, few-shot anomaly detection
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SPMLUniversal Weakly Supervised Segmentation by Pixel-to-Segment Contrastive Learning
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C2CImplementation of Cluster-to-Conquer: A Framework for End-to-End Multi-Instance Learning for Whole Slide Image Classification approach.
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troveWeakly supervised medical named entity classification
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weaselWeakly Supervised End-to-End Learning (NeurIPS 2021)
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WeSHClass[AAAI 2019] Weakly-Supervised Hierarchical Text Classification
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