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High-dimensional Asymptotics of Langevin Dynamics in Spiked Matrix
  Models

High-dimensional Asymptotics of Langevin Dynamics in Spiked Matrix Models

9 April 2022
Tengyuan Liang
Subhabrata Sen
Pragya Sur
ArXivPDFHTML

Papers citing "High-dimensional Asymptotics of Langevin Dynamics in Spiked Matrix Models"

8 / 8 papers shown
Title
The high-dimensional asymptotics of first order methods with random data
The high-dimensional asymptotics of first order methods with random data
Michael Celentano
Chen Cheng
Andrea Montanari
AI4CE
13
37
0
14 Dec 2021
Gradient Descent Maximizes the Margin of Homogeneous Neural Networks
Gradient Descent Maximizes the Margin of Homogeneous Neural Networks
Kaifeng Lyu
Jian Li
68
332
0
13 Jun 2019
Implicit Regularization in Deep Matrix Factorization
Implicit Regularization in Deep Matrix Factorization
Sanjeev Arora
Nadav Cohen
Wei Hu
Yuping Luo
AI4CE
58
500
0
31 May 2019
Learning and Generalization in Overparameterized Neural Networks, Going
  Beyond Two Layers
Learning and Generalization in Overparameterized Neural Networks, Going Beyond Two Layers
Zeyuan Allen-Zhu
Yuanzhi Li
Yingyu Liang
MLT
101
769
0
12 Nov 2018
Regularization Matters: Generalization and Optimization of Neural Nets
  v.s. their Induced Kernel
Regularization Matters: Generalization and Optimization of Neural Nets v.s. their Induced Kernel
Colin Wei
Jason D. Lee
Qiang Liu
Tengyu Ma
92
245
0
12 Oct 2018
Learning Overparameterized Neural Networks via Stochastic Gradient
  Descent on Structured Data
Learning Overparameterized Neural Networks via Stochastic Gradient Descent on Structured Data
Yuanzhi Li
Yingyu Liang
MLT
108
652
0
03 Aug 2018
Convergence of Gradient Descent on Separable Data
Convergence of Gradient Descent on Separable Data
Mor Shpigel Nacson
Jason D. Lee
Suriya Gunasekar
Pedro H. P. Savarese
Nathan Srebro
Daniel Soudry
47
167
0
05 Mar 2018
The Power of Interpolation: Understanding the Effectiveness of SGD in
  Modern Over-parametrized Learning
The Power of Interpolation: Understanding the Effectiveness of SGD in Modern Over-parametrized Learning
Siyuan Ma
Raef Bassily
M. Belkin
41
289
0
18 Dec 2017
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