Variance Reduced methods for Non-convex Composition Optimization

11/13/2017
by   Liu Liu, et al.
0

This paper explores the non-convex composition optimization in the form including inner and outer finite-sum functions with a large number of component functions. This problem arises in some important applications such as nonlinear embedding and reinforcement learning. Although existing approaches such as stochastic gradient descent (SGD) and stochastic variance reduced gradient (SVRG) descent can be applied to solve this problem, their query complexity tends to be high, especially when the number of inner component functions is large. In this paper, we apply the variance-reduced technique to derive two variance reduced algorithms that significantly improve the query complexity if the number of inner component functions is large. To the best of our knowledge, this is the first work that establishes the query complexity analysis for non-convex stochastic composition. Experiments validate the proposed algorithms and theoretical analysis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2018

Stochastically Controlled Stochastic Gradient for the Convex and Non-convex Composition problem

In this paper, we consider the convex and non-convex composition problem...
research
07/22/2019

Stochastic Variance Reduced Primal Dual Algorithms for Empirical Composition Optimization

We consider a generic empirical composition optimization problem, where ...
research
10/26/2017

Duality-free Methods for Stochastic Composition Optimization

We consider the composition optimization with two expected-value functio...
research
06/24/2019

A Stochastic Composite Gradient Method with Incremental Variance Reduction

We consider the problem of minimizing the composition of a smooth (nonco...
research
02/07/2018

Improved Oracle Complexity of Variance Reduced Methods for Nonsmooth Convex Stochastic Composition Optimization

We consider the nonsmooth convex composition optimization problem where ...
research
02/07/2018

Improved Incremental First-Order Oracle Complexity of Variance Reduced Methods for Nonsmooth Convex Stochastic Composition Optimization

We consider the nonsmooth convex composition optimization problem where ...
research
07/31/2019

Towards closing the gap between the theory and practice of SVRG

Among the very first variance reduced stochastic methods for solving the...

Please sign up or login with your details

Forgot password? Click here to reset