The Collusion of Memory and Nonlinearity in Stochastic Approximation With Constant Stepsize
Dongyan Huo, Yixuan Zhang, Yudong Chen, Qiaomin Xie

TL;DR
This paper analyzes stochastic approximation with Markovian data and nonlinear updates under constant stepsize, establishing weak convergence, asymptotic bias, and finite-time bounds, revealing complex interactions not captured by prior work.
Contribution
It provides the first detailed analysis of SA with both Markovian data and nonlinear updates, including convergence, bias characterization, and finite-time bounds.
Findings
Established weak convergence of joint process (x_k, θ_k)
Characterized asymptotic bias including interaction term
Derived finite-time bounds and non-asymptotic convergence rates
Abstract
In this work, we investigate stochastic approximation (SA) with Markovian data and nonlinear updates under constant stepsize . Existing work has primarily focused on either i.i.d. data or linear update rules. We take a new perspective and carefully examine the simultaneous presence of Markovian dependency of data and nonlinear update rules, delineating how the interplay between these two structures leads to complications that are not captured by prior techniques. By leveraging the smoothness and recurrence properties of the SA updates, we develop a fine-grained analysis of the correlation between the SA iterates and Markovian data . This enables us to overcome the obstacles in existing analysis and establish for the first time the weak convergence of the joint process . Furthermore, we present a precise characterization of the…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
Taxonomy
TopicsStochastic processes and financial applications
