黑盒凸优化的信息复杂性:基于反馈信息理论的新视角

M. Raginsky, A. Rakhlin
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引用次数: 14

摘要

本文从反馈信息论的角度重新审视黑盒凸优化的信息复杂性,黑盒凸优化首先在Nemirovski和Yudin的开创性工作中得到研究。如今,大规模凸规划出现在各种应用程序中,完善我们对其基本限制的理解是很重要的。黑盒凸优化的目标是在一个紧凑的凸域上,使用一种迭代方案最小化给定类中的未知凸目标函数,该方案通过查询被优化函数的局部信息来生成近似解。给定问题类的信息复杂性定义为将该类中的每个函数最小化到所需的某种精度所需的最小查询数。我们提出了一种简单的信息理论方法,它不仅恢复了Nemirovski和Yudin的许多结果,而且还给出了一些关于迭代凸优化方案接近解的最优速率的新界限。作为奖励,我们给出了在单位区间上的某个主动学习问题的极小极大下界的一个特别简单的推导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information complexity of black-box convex optimization: A new look via feedback information theory
This paper revisits information complexity of black-box convex optimization, first studied in the seminal work of Nemirovski and Yudin, from the perspective of feedback information theory. These days, large-scale convex programming arises in a variety of applications, and it is important to refine our understanding of its fundamental limitations. The goal of black-box convex optimization is to minimize an unknown convex objective function from a given class over a compact, convex domain using an iterative scheme that generates approximate solutions by querying an oracle for local information about the function being optimized. The information complexity of a given problem class is defined as the smallest number of queries needed to minimize every function in the class to some desired accuracy. We present a simple information-theoretic approach that not only recovers many of the results of Nemirovski and Yudin, but also gives some new bounds pertaining to optimal rates at which iterative convex optimization schemes approach the solution. As a bonus, we give a particularly simple derivation of the minimax lower bound for a certain active learning problem on the unit interval.
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