Stochastic Optimization Algorithms for Problems with Controllable Biased Oracles
Abstract
Motivated by emerging applications in machine learning, we consider an optimization problem in a general form where the gradient of the objective function is available through a biased stochastic oracle. We assume a bias-control parameter can reduce the bias magnitude; however, a lower bias requires more computation/samples. For instance, in two applications on stochastic composition optimization and policy optimization for infinite-horizon Markov decision processes, we show that the bias follows a power law and exponential decay, respectively, as functions of their corresponding bias control parameters. For problems with such gradient oracles, the paper proposes stochastic algorithms that adjust the bias-control parameter throughout the iterations. We analyze the nonasymptotic performance of the proposed algorithms in the nonconvex regime and establish their sample or bias-control computational complexities to obtain a stationary point in expectation or with high probability. Finally, we numerically evaluate the performance of the proposed algorithms over three applications.
Cite
@article{arxiv.2306.07810,
title = {Stochastic Optimization Algorithms for Problems with Controllable Biased Oracles},
author = {Yin Liu and Sam Davanloo Tajbakhsh},
journal= {arXiv preprint arXiv:2306.07810},
year = {2026}
}