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Yuxin Chen
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Cited by
Year
Solving random quadratic systems of equations is nearly as easy as solving linear systems
Y Chen, EJ Candès
Communications on pure and applied mathematics 70 (5), 822-883, 2017
6212017
Nonconvex optimization meets low-rank matrix factorization: An overview
Y Chi, YM Lu, Y Chen
IEEE Transactions on Signal Processing 67 (20), 5239-5269, 2019
4582019
Implicit regularization in nonconvex statistical estimation: Gradient descent converges linearly for phase retrieval, matrix completion, and blind deconvolution
C Ma, K Wang, Y Chi, Y Chen
Foundations of Computational Mathematics 20 (3), 451-632, 2020
372*2020
Robust spectral compressed sensing via structured matrix completion
Y Chen, Y Chi
IEEE Transactions on Information Theory 60 (10), 6576-6601, 2014
337*2014
Gradient descent with random initialization: fast global convergence for nonconvex phase retrieval
Y Chen, Y Chi, J Fan, C Ma
Mathematical Programming 176 (1-2), 5-37, 2019
2602019
Exact and stable covariance estimation from quadratic sampling via convex programming
Y Chen, Y Chi, AJ Goldsmith
IEEE Transactions on Information Theory 61 (7), 4034-4059, 2015
2542015
Compressive two-dimensional harmonic retrieval via atomic norm minimization
Y Chi, Y Chen
IEEE Transactions on Signal Processing 63 (4), 1030-1042, 2014
2032014
Fast global convergence of natural policy gradient methods with entropy regularization
S Cen, C Cheng, Y Chen, Y Wei, Y Chi
Operations Research 70 (4), 2563-2578, 2022
1832022
Spectral MLE: Top-k rank aggregation from pairwise comparisons
Y Chen, C Suh
International Conference on Machine Learning, 371-380, 2015
1722015
Spectral Methods for Data Science: A Statistical Perspective
Y Chen, Y Chi, J Fan, C Ma
Foundations and Trends® in Machine Learning 14 (5), 566-806, 2021
170*2021
Near-optimal joint object matching via convex relaxation
Y Chen, LJ Guibas, QX Huang
International Conference on Machine Learning, 2014
1552014
Noisy matrix completion: Understanding statistical guarantees for convex relaxation via nonconvex optimization
Y Chen, Y Chi, J Fan, C Ma, Y Yan
SIAM Journal on Optimization 30 (4), 3098-3121, 2020
154*2020
The likelihood ratio test in high-dimensional logistic regression is asymptotically a rescaled Chi-square
P Sur, Y Chen, EJ Candès
Probability Theory and Related Fields 175 (1-2), 487-558, 2019
1532019
Spectral method and regularized MLE are both optimal for top- ranking
Y Chen, J Fan, C Ma, K Wang
The Annals of Statistics 47 (4), 2204-2235, 2019
1472019
Breaking the sample size barrier in model-based reinforcement learning with a generative model
G Li, Y Wei, Y Chi, Y Chen
Operations Research 72 (1), 203-221, 2024
132*2024
Inference and uncertainty quantification for noisy matrix completion
Y Chen, J Fan, C Ma, Y Yan
Proceedings of the National Academy of Sciences 116 (46), 22931-22937, 2019
1282019
Deterministic matrices matching the compressed sensing phase transitions of Gaussian random matrices
H Monajemi, S Jafarpour, M Gavish, DL Donoho, SCME Collaboration
Proceedings of the National Academy of Sciences 110 (4), 1181-1186, 2013
1172013
The projected power method: An efficient algorithm for joint alignment from pairwise differences
Y Chen, EJ Candès
Communications on Pure and Applied Mathematics 71 (8), 1648-1714, 2018
1122018
Communication-efficient distributed optimization in networks with gradient tracking and variance reduction
B Li, S Cen, Y Chen, Y Chi
Journal of Machine Learning Research 21 (180), 1-51, 2020
1082020
Nonconvex low-rank tensor completion from noisy data
C Cai, G Li, HV Poor, Y Chen
Operations Research 70 (2), 1219-1237, 2022
1062022
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