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Longxiu Huang

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Coseparable Nonnegative Tensor Factorization With T-CUR Decomposition

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Jan 30, 2024
Juefei Chen, Longxiu Huang, Yimin Wei

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On the Robustness of Cross-Concentrated Sampling for Matrix Completion

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Jan 28, 2024
HanQin Cai, Longxiu Huang, Chandra Kundu, Bowen Su

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Robust Tensor CUR Decompositions: Rapid Low-Tucker-Rank Tensor Recovery with Sparse Corruption

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May 06, 2023
HanQin Cai, Zehan Chao, Longxiu Huang, Deanna Needell

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Non-convex approaches for low-rank tensor completion under tubal sampling

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Mar 17, 2023
Zheng Tan, Longxiu Huang, HanQin Cai, Yifei Lou

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Distributed Randomized Kaczmarz for the Adversarial Workers

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Feb 24, 2023
Longxiu Huang, Xia Li, Deanna Needell

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Matrix Completion with Cross-Concentrated Sampling: Bridging Uniform Sampling and CUR Sampling

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Aug 20, 2022
HanQin Cai, Longxiu Huang, Pengyu Li, Deanna Needell

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Distributed randomized Kaczmarz for the adversarial workers

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Feb 28, 2022
Xia Li, Longxiu Huang, Deanna Needell

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Guided Semi-Supervised Non-negative Matrix Factorization on Legal Documents

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Jan 31, 2022
Pengyu Li, Christine Tseng, Yaxuan Zheng, Joyce A. Chew, Longxiu Huang, Benjamin Jarman, Deanna Needell

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Fast Robust Tensor Principal Component Analysis via Fiber CUR Decomposition

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Aug 23, 2021
HanQin Cai, Zehan Chao, Longxiu Huang, Deanna Needell

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Mode-wise Tensor Decompositions: Multi-dimensional Generalizations of CUR Decompositions

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Mar 19, 2021
HanQin Cai, Keaton Hamm, Longxiu Huang, Deanna Needell

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