English

Improved Sample Complexity for Stochastic Compositional Variance Reduced Gradient

Optimization and Control 2020-09-01 v5 Machine Learning

Abstract

Convex composition optimization is an emerging topic that covers a wide range of applications arising from stochastic optimal control, reinforcement learning and multi-stage stochastic programming. Existing algorithms suffer from unsatisfactory sample complexity and practical issues since they ignore the convexity structure in the algorithmic design. In this paper, we develop a new stochastic compositional variance-reduced gradient algorithm with the sample complexity of O((m+n)log(1/ϵ)+1/ϵ3)O((m+n)\log(1/\epsilon)+1/\epsilon^3) where m+nm+n is the total number of samples. Our algorithm is near-optimal as the dependence on m+nm+n is optimal up to a logarithmic factor. Experimental results on real-world datasets demonstrate the effectiveness and efficiency of the new algorithm.

Keywords

Cite

@article{arxiv.1806.00458,
  title  = {Improved Sample Complexity for Stochastic Compositional Variance Reduced Gradient},
  author = {Tianyi Lin and Chenyou Fan and Mengdi Wang and Michael I. Jordan},
  journal= {arXiv preprint arXiv:1806.00458},
  year   = {2020}
}

Comments

6 Pages. Accepted by ACC 2020