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Global Convergence of Gradient Descent for Asymmetric Low-Rank Matrix
  Factorization

Global Convergence of Gradient Descent for Asymmetric Low-Rank Matrix Factorization

27 June 2021
Tian-Chun Ye
S. Du
ArXivPDFHTML

Papers citing "Global Convergence of Gradient Descent for Asymmetric Low-Rank Matrix Factorization"

32 / 32 papers shown
Title
Stability properties of gradient flow dynamics for the symmetric
  low-rank matrix factorization problem
Stability properties of gradient flow dynamics for the symmetric low-rank matrix factorization problem
Hesameddin Mohammadi
Mohammad Tinati
Stephen Tu
Mahdi Soltanolkotabi
M. Jovanović
68
0
0
24 Nov 2024
BLAST: Block-Level Adaptive Structured Matrices for Efficient Deep
  Neural Network Inference
BLAST: Block-Level Adaptive Structured Matrices for Efficient Deep Neural Network Inference
Changwoo Lee
Soo Min Kwon
Qing Qu
Hun-Seok Kim
25
0
0
28 Oct 2024
On the Crucial Role of Initialization for Matrix Factorization
On the Crucial Role of Initialization for Matrix Factorization
Bingcong Li
Liang Zhang
Aryan Mokhtari
Niao He
26
1
0
24 Oct 2024
Provable Acceleration of Nesterov's Accelerated Gradient for Rectangular
  Matrix Factorization and Linear Neural Networks
Provable Acceleration of Nesterov's Accelerated Gradient for Rectangular Matrix Factorization and Linear Neural Networks
Zhenghao Xu
Yuqing Wang
T. Zhao
Rachel Ward
Molei Tao
19
0
0
12 Oct 2024
On subdifferential chain rule of matrix factorization and beyond
On subdifferential chain rule of matrix factorization and beyond
Jiewen Guan
Anthony Man-Cho So
AI4CE
16
1
0
07 Oct 2024
In-depth Analysis of Low-rank Matrix Factorisation in a Federated
  Setting
In-depth Analysis of Low-rank Matrix Factorisation in a Federated Setting
Constantin Philippenko
Kevin Scaman
Laurent Massoulié
FedML
29
1
0
13 Sep 2024
Federated Representation Learning in the Under-Parameterized Regime
Federated Representation Learning in the Under-Parameterized Regime
Renpu Liu
Cong Shen
Jing Yang
19
4
0
07 Jun 2024
Reweighted Solutions for Weighted Low Rank Approximation
Reweighted Solutions for Weighted Low Rank Approximation
David P. Woodruff
T. Yasuda
20
1
0
04 Jun 2024
On the Convergence of Differentially-Private Fine-tuning: To Linearly
  Probe or to Fully Fine-tune?
On the Convergence of Differentially-Private Fine-tuning: To Linearly Probe or to Fully Fine-tune?
Shuqi Ke
Charlie Hou
Giulia Fanti
Sewoong Oh
34
4
0
29 Feb 2024
Good regularity creates large learning rate implicit biases: edge of
  stability, balancing, and catapult
Good regularity creates large learning rate implicit biases: edge of stability, balancing, and catapult
Yuqing Wang
Zhenghao Xu
Tuo Zhao
Molei Tao
24
10
0
26 Oct 2023
Matrix Compression via Randomized Low Rank and Low Precision
  Factorization
Matrix Compression via Randomized Low Rank and Low Precision Factorization
R. Saha
Varun Srivastava
Mert Pilanci
13
18
0
17 Oct 2023
How Over-Parameterization Slows Down Gradient Descent in Matrix Sensing:
  The Curses of Symmetry and Initialization
How Over-Parameterization Slows Down Gradient Descent in Matrix Sensing: The Curses of Symmetry and Initialization
Nuoya Xiong
Lijun Ding
Simon S. Du
17
11
0
03 Oct 2023
Asymmetric matrix sensing by gradient descent with small random
  initialization
Asymmetric matrix sensing by gradient descent with small random initialization
J. S. Wind
23
1
0
04 Sep 2023
Maestro: Uncovering Low-Rank Structures via Trainable Decomposition
Maestro: Uncovering Low-Rank Structures via Trainable Decomposition
Samuel Horváth
Stefanos Laskaridis
Shashank Rajput
Hongyi Wang
BDL
26
4
0
28 Aug 2023
Convergence of Alternating Gradient Descent for Matrix Factorization
Convergence of Alternating Gradient Descent for Matrix Factorization
R. Ward
T. Kolda
22
6
0
11 May 2023
The Ideal Continual Learner: An Agent That Never Forgets
The Ideal Continual Learner: An Agent That Never Forgets
Liangzu Peng
Paris V. Giampouras
René Vidal
CLL
106
26
0
29 Apr 2023
Active Self-Supervised Learning: A Few Low-Cost Relationships Are All
  You Need
Active Self-Supervised Learning: A Few Low-Cost Relationships Are All You Need
Vivien A. Cabannes
Léon Bottou
Yann LeCun
Randall Balestriero
29
13
0
27 Mar 2023
Greedy Pruning with Group Lasso Provably Generalizes for Matrix Sensing
Greedy Pruning with Group Lasso Provably Generalizes for Matrix Sensing
Nived Rajaraman
Devvrit
Aryan Mokhtari
Kannan Ramchandran
18
0
0
20 Mar 2023
The Power of Preconditioning in Overparameterized Low-Rank Matrix
  Sensing
The Power of Preconditioning in Overparameterized Low-Rank Matrix Sensing
Xingyu Xu
Yandi Shen
Yuejie Chi
Cong Ma
22
34
0
02 Feb 2023
Rank-1 Matrix Completion with Gradient Descent and Small Random
  Initialization
Rank-1 Matrix Completion with Gradient Descent and Small Random Initialization
Daesung Kim
Hye Won Chung
17
2
0
19 Dec 2022
A Novel Stochastic Gradient Descent Algorithm for Learning Principal
  Subspaces
A Novel Stochastic Gradient Descent Algorithm for Learning Principal Subspaces
Charline Le Lan
Joshua Greaves
Jesse Farebrother
Mark Rowland
Fabian Pedregosa
Rishabh Agarwal
Marc G. Bellemare
35
8
0
08 Dec 2022
Behind the Scenes of Gradient Descent: A Trajectory Analysis via Basis
  Function Decomposition
Behind the Scenes of Gradient Descent: A Trajectory Analysis via Basis Function Decomposition
Jianhao Ma
Li-Zhen Guo
S. Fattahi
19
4
0
01 Oct 2022
Nonconvex Matrix Factorization is Geodesically Convex: Global Landscape
  Analysis for Fixed-rank Matrix Optimization From a Riemannian Perspective
Nonconvex Matrix Factorization is Geodesically Convex: Global Landscape Analysis for Fixed-rank Matrix Optimization From a Riemannian Perspective
Yuetian Luo
Nicolas García Trillos
9
6
0
29 Sep 2022
Accelerating nuclear-norm regularized low-rank matrix optimization
  through Burer-Monteiro decomposition
Accelerating nuclear-norm regularized low-rank matrix optimization through Burer-Monteiro decomposition
Ching-pei Lee
Ling Liang
Tianyun Tang
Kim-Chuan Toh
11
11
0
29 Apr 2022
Randomly Initialized Alternating Least Squares: Fast Convergence for
  Matrix Sensing
Randomly Initialized Alternating Least Squares: Fast Convergence for Matrix Sensing
Kiryung Lee
Dominik Stöger
13
11
0
25 Apr 2022
Continual learning: a feature extraction formalization, an efficient
  algorithm, and fundamental obstructions
Continual learning: a feature extraction formalization, an efficient algorithm, and fundamental obstructions
Binghui Peng
Andrej Risteski
CLL
OOD
20
10
0
27 Mar 2022
Flat minima generalize for low-rank matrix recovery
Flat minima generalize for low-rank matrix recovery
Lijun Ding
D. Drusvyatskiy
Maryam Fazel
Zaid Harchaoui
18
16
0
07 Mar 2022
Algorithmic Regularization in Model-free Overparametrized Asymmetric
  Matrix Factorization
Algorithmic Regularization in Model-free Overparametrized Asymmetric Matrix Factorization
Liwei Jiang
Yudong Chen
Lijun Ding
15
26
0
06 Mar 2022
How and When Random Feedback Works: A Case Study of Low-Rank Matrix
  Factorization
How and When Random Feedback Works: A Case Study of Low-Rank Matrix Factorization
Shivam Garg
Santosh Vempala
9
3
0
17 Nov 2021
Large Learning Rate Tames Homogeneity: Convergence and Balancing Effect
Large Learning Rate Tames Homogeneity: Convergence and Balancing Effect
Yuqing Wang
Minshuo Chen
T. Zhao
Molei Tao
AI4CE
55
40
0
07 Oct 2021
Nonconvex Factorization and Manifold Formulations are Almost Equivalent
  in Low-rank Matrix Optimization
Nonconvex Factorization and Manifold Formulations are Almost Equivalent in Low-rank Matrix Optimization
Yuetian Luo
Xudong Li
Anru R. Zhang
17
9
0
03 Aug 2021
GNMR: A provable one-line algorithm for low rank matrix recovery
GNMR: A provable one-line algorithm for low rank matrix recovery
Pini Zilber
B. Nadler
40
13
0
24 Jun 2021
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