SOTAVerified

Adaptive Sampling Quasi-Newton Methods for Derivative-Free Stochastic Optimization

2019-10-29Unverified0· sign in to hype

Raghu Bollapragada, Stefan M. Wild

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We consider stochastic zero-order optimization problems, which arise in settings from simulation optimization to reinforcement learning. We propose an adaptive sampling quasi-Newton method where we estimate the gradients of a stochastic function using finite differences within a common random number framework. We employ modified versions of a norm test and an inner product quasi-Newton test to control the sample sizes used in the stochastic approximations. We provide preliminary numerical experiments to illustrate potential performance benefits of the proposed method.

Tasks

Reproductions