DocumentCode :
3766050
Title :
Stochastic optimization for deep CCA via nonlinear orthogonal iterations
Author :
Weiran Wang;Raman Arora;Karen Livescu;Nathan Srebro
Author_Institution :
Toyota Technological Institute at Chicago 6045 S. Kenwood Ave., IL 60637, United States
fYear :
2015
Firstpage :
688
Lastpage :
695
Abstract :
Deep CCA is a recently proposed deep neural network extension to the traditional canonical correlation analysis (CCA), and has been successful for multi-view representation learning in several domains. However, stochastic optimization of the deep CCA objective is not straightforward, because it does not decouple over training examples. Previous optimizers for deep CCA are either batch-based algorithms or stochastic optimization using large minibatches, which can have high memory consumption. In this paper, we tackle the problem of stochastic optimization for deep CCA with small minibatches, based on an iterative solution to the CCA objective, and show that we can achieve as good performance as previous optimizers and thus alleviate the memory requirement.
Keywords :
"Training","Optimization","Correlation","Feature extraction","Stochastic processes","Convergence","Algorithm design and analysis"
Publisher :
ieee
Conference_Titel :
Communication, Control, and Computing (Allerton), 2015 53rd Annual Allerton Conference on
Type :
conf
DOI :
10.1109/ALLERTON.2015.7447071
Filename :
7447071
Link To Document :
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