Machine Learning · Computer Science
Stochastic Approximation for Canonical Correlation Analysis
Raman Arora, Teodor V. Marinov, Poorya Mianjy, Nathan Srebro
2018-02-27
Optimization and Control · Mathematics
CSG: A stochastic gradient method for a wide class of optimization problems appearing in a machine learning or data-driven context
Lukas Pflug, Max Grieshammer, Andrian Uihlein, Michael Stingl
2021-11-16
Numerical Analysis · Mathematics
Constrained and Preconditioned Stochastic Gradient Method
Hong Jiang, Gang Huang, Paul Wilford, Liangkai Yu
2015-09-01
Optimization and Control · Mathematics
The Continuous Stochastic Gradient Method: Part II -- Application and Numerics
Max Grieshammer, Lukas Pflug, Michael Stingl, Andrian Uihlein
2023-03-23
Machine Learning · Statistics
Bridging the Gap between Stochastic Gradient MCMC and Stochastic Optimization
Changyou Chen, David Carlson, Zhe Gan, Chunyuan Li +1
2016-08-08
Optimization and Control · Mathematics
Near-Optimal Stochastic Approximation for Online Principal Component Estimation
Chris Junchi Li, Mengdi Wang, Han Liu, Tong Zhang
2017-10-09
Optimization and Control · Mathematics
The Continuous Stochastic Gradient Method: Part I -- Convergence Theory
Max Grieshammer, Lukas Pflug, Michael Stingl, Andrian Uihlein
2023-03-23
Optimization and Control · Mathematics
A probabilistic incremental proximal gradient method
Ömer Deniz Akyildiz, Émilie Chouzenoux, Víctor Elvira, Joaquín Míguez
2019-06-20
Neural and Evolutionary Computing · Computer Science
MAC, a novel stochastic optimization method
Attila László Nagy, Goitom Simret Kidane, Tamás Turányi, János Tóth
2023-04-25
Multiagent Systems · Computer Science
SPSC: a new execution policy for exploring discrete-time stochastic simulations
Yu-Lin Huang, Gildas Morvan, Frédéric Pichon, David Mercier
2019-09-23
Machine Learning · Statistics
An Alternating Manifold Proximal Gradient Method for Sparse PCA and Sparse CCA
Shixiang Chen, Shiqian Ma, Lingzhou Xue, Hui Zou
2019-03-28