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2003.13332
Cited By
Stochastic Proximal Gradient Algorithm with Minibatches. Application to Large Scale Learning Models
30 March 2020
A. Pătraşcu
C. Paduraru
Paul Irofti
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Papers citing
"Stochastic Proximal Gradient Algorithm with Minibatches. Application to Large Scale Learning Models"
12 / 12 papers shown
Title
Vector-Valued Graph Trend Filtering with Non-Convex Penalties
R. Varma
Harlin Lee
J. Kovacevic
Yuejie Chi
43
33
0
29 May 2019
Stochastic (Approximate) Proximal Point Methods: Convergence, Optimality, and Adaptivity
Hilal Asi
John C. Duchi
116
124
0
12 Oct 2018
Stochastic model-based minimization of weakly convex functions
Damek Davis
Dmitriy Drusvyatskiy
61
373
0
17 Mar 2018
SGD and Hogwild! Convergence Without the Bounded Gradients Assumption
Lam M. Nguyen
Phuong Ha Nguyen
Marten van Dijk
Peter Richtárik
K. Scheinberg
Martin Takáč
66
227
0
11 Feb 2018
Snake: a Stochastic Proximal Gradient Algorithm for Regularized Problems over Large Graphs
Adil Salim
Pascal Bianchi
W. Hachem
42
17
0
19 Dec 2017
Stochastic Nonconvex Optimization with Large Minibatches
Weiran Wang
Nathan Srebro
54
26
0
25 Sep 2017
Accurate, Large Minibatch SGD: Training ImageNet in 1 Hour
Priya Goyal
Piotr Dollár
Ross B. Girshick
P. Noordhuis
Lukasz Wesolowski
Aapo Kyrola
Andrew Tulloch
Yangqing Jia
Kaiming He
3DH
87
3,666
0
08 Jun 2017
Train longer, generalize better: closing the generalization gap in large batch training of neural networks
Elad Hoffer
Itay Hubara
Daniel Soudry
ODL
138
798
0
24 May 2017
Memory and Communication Efficient Distributed Stochastic Optimization with Minibatch-Prox
Jialei Wang
Weiran Wang
Nathan Srebro
80
54
0
21 Feb 2017
Towards stability and optimality in stochastic gradient descent
Panos Toulis
Dustin Tran
E. Airoldi
57
56
0
10 May 2015
HOGWILD!: A Lock-Free Approach to Parallelizing Stochastic Gradient Descent
Feng Niu
Benjamin Recht
Christopher Ré
Stephen J. Wright
121
2,272
0
28 Jun 2011
Hybrid Deterministic-Stochastic Methods for Data Fitting
M. Friedlander
Mark Schmidt
116
387
0
13 Apr 2011
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