线性双时间尺度随机近似的有限时间分析

T. Doan, J. Romberg
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引用次数: 12

摘要

我们考虑用双时间尺度随机逼近来求两个方程线性系统的解。这些方法在许多领域都有广泛的应用,特别是在机器学习和强化学习方面。该领域的一个关键问题是分析该方法的收敛率(或样本复杂度),这在现有文献中尚未得到充分解决。因此,我们在本文中的贡献是为双时间尺度随机近似的有限时间性能提供了一种新的分析。我们的关键思想是利用优化中的常用技术,特别是,我们利用残差函数来捕获两个迭代之间的耦合。这将允许我们显式地设计两个迭代所使用的两个步长,并提供两个迭代收敛的有限时间误差界。本文的分析为现有文献中的双时间尺度随机逼近技术提供了另一个方面,我们认为双时间尺度随机逼近技术更优雅,更适用于许多场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear Two-Time-Scale Stochastic Approximation A Finite-Time Analysis
We consider two-time-scale stochastic approximation for finding the solution of a linear system of two equations. Such methods have found broad applications in many areas, especially in machine learning and reinforcement learning. A critical question in this area is to analyze the convergence rates (or sample complexity) of this method, which has not been fully addressed in the existing literature. Our contribution in this paper is, therefore, to provide a new analysis for the finite-time performance of the two-time-scale stochastic approximation. Our key idea is to leverage the common techniques from optimization, in particular, we utilize a residual function to capture the coupling between the two iterates. This will allow us to explicit design the two step sizes used by the two iterations as well as to provide a finite-time error bound on the convergence of the two iterates. Our analysis in this paper provides another aspect to the existing techniques in the literature of two-time-scale stochastic approximation, which we believe is more elegant and can be more applicable to many scenarios.
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