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Ziyi Liang

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Structured Conformal Inference for Matrix Completion with Applications to Group Recommender Systems

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Apr 26, 2024
Ziyi Liang, Tianmin Xie, Xin Tong, Matteo Sesia

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Conformal inference is (almost) free for neural networks trained with early stopping

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Jan 27, 2023
Ziyi Liang, Yanfei Zhou, Matteo Sesia

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Integrative conformal p-values for powerful out-of-distribution testing with labeled outliers

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Aug 23, 2022
Ziyi Liang, Matteo Sesia, Wenguang Sun

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Locally Adaptive Transfer Learning Algorithms for Large-Scale Multiple Testing

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Mar 25, 2022
Ziyi Liang, T. Tony Cai, Wenguang Sun, Yin Xia

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