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Riemannian stochastic variance reduced gradient algorithm with
  retraction and vector transport

Riemannian stochastic variance reduced gradient algorithm with retraction and vector transport

18 February 2017
Hiroyuki Sato
Hiroyuki Kasai
Bamdev Mishra
ArXivPDFHTML

Papers citing "Riemannian stochastic variance reduced gradient algorithm with retraction and vector transport"

9 / 9 papers shown
Title
Riemannian stochastic recursive momentum method for non-convex
  optimization
Riemannian stochastic recursive momentum method for non-convex optimization
Andi Han
Junbin Gao
ODL
28
17
0
11 Aug 2020
Cheap Orthogonal Constraints in Neural Networks: A Simple
  Parametrization of the Orthogonal and Unitary Group
Cheap Orthogonal Constraints in Neural Networks: A Simple Parametrization of the Orthogonal and Unitary Group
Mario Lezcano Casado
David Martínez-Rubio
27
194
0
24 Jan 2019
R-SPIDER: A Fast Riemannian Stochastic Optimization Algorithm with
  Curvature Independent Rate
R-SPIDER: A Fast Riemannian Stochastic Optimization Algorithm with Curvature Independent Rate
J.N. Zhang
Hongyi Zhang
S. Sra
26
39
0
10 Nov 2018
McTorch, a manifold optimization library for deep learning
McTorch, a manifold optimization library for deep learning
Mayank Meghwanshi
Pratik Jawanpuria
Anoop Kunchukuttan
Hiroyuki Kasai
Bamdev Mishra
AI4CE
25
41
0
03 Oct 2018
Towards Riemannian Accelerated Gradient Methods
Towards Riemannian Accelerated Gradient Methods
Hongyi Zhang
S. Sra
13
53
0
07 Jun 2018
Averaging Stochastic Gradient Descent on Riemannian Manifolds
Averaging Stochastic Gradient Descent on Riemannian Manifolds
Nilesh Tripuraneni
Nicolas Flammarion
Francis R. Bach
Michael I. Jordan
38
99
0
26 Feb 2018
Tensor Networks for Dimensionality Reduction and Large-Scale
  Optimizations. Part 2 Applications and Future Perspectives
Tensor Networks for Dimensionality Reduction and Large-Scale Optimizations. Part 2 Applications and Future Perspectives
A. Cichocki
Anh-Huy Phan
Qibin Zhao
Namgil Lee
Ivan Oseledets
Masashi Sugiyama
Danilo P. Mandic
26
296
0
30 Aug 2017
A Proximal Stochastic Gradient Method with Progressive Variance
  Reduction
A Proximal Stochastic Gradient Method with Progressive Variance Reduction
Lin Xiao
Tong Zhang
ODL
93
737
0
19 Mar 2014
Incremental Majorization-Minimization Optimization with Application to
  Large-Scale Machine Learning
Incremental Majorization-Minimization Optimization with Application to Large-Scale Machine Learning
Julien Mairal
79
317
0
18 Feb 2014
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