Zeroth-order randomized block methods for constrained minimization of expectation-valued Lipschitz continuous functions

U. Shanbhag, Farzad Yousefian
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引用次数: 2

Abstract

We consider the minimization of an $L_{0}$-Lipschitz continuous and expectation-valued function, denoted by $f$ and defined as $f(\mathrm{x})\ {\buildrel \triangle\over=}\\mathbb{E}[\tilde{f}(\mathrm{x}, \omega)]$, over a Cartesian product of closed and convex sets with a view towards obtaining both asymptotics as well as rate and complexity guarantees for computing an approximate stationary point (in a Clarke sense). We adopt a smoothing-based approach reliant on minimizing $f_{\eta}$ where $f(\mathrm{x})\ {\buildrel \triangle\over=}\\mathbb{E}_{u}[f(\mathrm{x}+\eta u)],u$ is a random variable defined on a unit sphere, and $\eta > 0$. In fact, it is observed that a stationary point of the $\eta$-smoothed problem is a $2\eta$-stationary point for the original problem in the Clarke sense. In such a setting, we derive a suitable residual function that provides a metric for stationarity for the smoothed problem. By leveraging a zeroth-order framework reliant on utilizing sampled function evaluations implemented in a block-structured regime, we make two sets of contributions for the sequence generated by the proposed scheme. (i) The residual function of the smoothed problem tends to zero almost surely along the generated sequence; (ii) To compute an $\mathrm{x}$ that ensures that the expected norm of the residual of the $\eta$-smoothed problem is within $\epsilon$ requires no greater than $\mathcal{O}(\frac{1}{\eta\epsilon^{2}})$ projection steps and $\mathcal{O}\left(\frac{1}{\eta^{2}\epsilon^{4}}\right)$ function evaluations. These statements appear to be novel with few related results available to contend with general nonsmooth, nonconvex, and stochastic regimes via zeroth-order approaches.
期望值Lipschitz连续函数约束最小化的零阶随机块方法
我们考虑一个$L_{0}$ -Lipschitz连续期望值函数,用$f$表示,定义为$f(\mathrm{x})\ {\buildrel \triangle\over=}\\mathbb{E}[\tilde{f}(\mathrm{x}, \omega)]$,在闭合集和凸集的笛卡尔积上最小化,以期获得计算近似平稳点(在Clarke意义上)的渐近性以及速率和复杂性保证。我们采用基于平滑的方法,依赖于最小化$f_{\eta}$,其中$f(\mathrm{x})\ {\buildrel \triangle\over=}\\mathbb{E}_{u}[f(\mathrm{x}+\eta u)],u$是在单位球上定义的随机变量,$\eta > 0$。实际上,可以观察到,在Clarke意义下,$\eta$ -平滑问题的一个平稳点就是原问题的一个$2\eta$ -平稳点。在这种情况下,我们推导出一个合适的残差函数,为光滑问题的平稳性提供度量。通过利用依赖于在块结构机制中实现的抽样函数评估的零阶框架,我们为提议方案生成的序列做出了两组贡献。(i)平滑问题的残差函数沿生成的序列几乎肯定地趋于零;(ii)计算一个$\mathrm{x}$,以确保$\eta$平滑问题的残差的期望范数在$\epsilon$内,需要的投影步骤不大于$\mathcal{O}(\frac{1}{\eta\epsilon^{2}})$,函数求值不大于$\mathcal{O}\left(\frac{1}{\eta^{2}\epsilon^{4}}\right)$。这些陈述似乎是新颖的,很少有相关的结果可以通过零阶方法与一般的非光滑、非凸和随机状态相抗衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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