Goto

Collaborating Authors

 accelerating stochastic composition optimization


Accelerating Stochastic Composition Optimization

Neural Information Processing Systems

Consider the stochastic composition optimization problem where the objective is a composition of two expected-value functions. We propose a new stochastic first-order method, namely the accelerated stochastic compositional proximal gradient (ASC-PG) method, which updates based on queries to the sampling oracle using two different timescales. The ASC-PG is the first proximal gradient method for the stochastic composition problem that can deal with nonsmooth regularization penalty. We show that the ASC-PG exhibits faster convergence than the best known algorithms, and that it achieves the optimal sample-error complexity in several important special cases. We further demonstrate the application of ASC-PG to reinforcement learning and conduct numerical experiments.


Reviews: Accelerating Stochastic Composition Optimization

Neural Information Processing Systems

First of all, the novelty and originality is a big concern. Not to mention the fact that, the main Theorem 1 assumes no nonsmooth penalty term. So literally, this paper has not really done what they claimed - address nonsmooth regularization penalty without deteriorating the convergence rate. Theorem 2 is more or less just a repetition of Theorem 7 in [Wang et.al, 2016], except with a slightly more general choice of learning rate. Overall, I don't feel the paper has a substantial contribution.


Accelerating Stochastic Composition Optimization

Neural Information Processing Systems

Consider the stochastic composition optimization problem where the objective is a composition of two expected-value functions. We propose a new stochastic first-order method, namely the accelerated stochastic compositional proximal gradient (ASC-PG) method, which updates based on queries to the sampling oracle using two different timescales. The ASC-PG is the first proximal gradient method for the stochastic composition problem that can deal with nonsmooth regularization penalty. We show that the ASC-PG exhibits faster convergence than the best known algorithms, and that it achieves the optimal sample-error complexity in several important special cases. We further demonstrate the application of ASC-PG to reinforcement learning and conduct numerical experiments.