Proximal operations are among the most common primitives appearing in both practical and theoretical (or high-level) optimization methods. This basic operation typically consists in solving an intermediary (hopefully simpler) optimization problem. In this work, we survey notions of inaccuracies that can be used when solving those intermediary optimization problems. Then, we show that worst-case guarantees for algorithms relying on such inexact proximal operations can be systematically obtained through a generic procedure based on semidefinite programming. This methodology is primarily based on the approach introduced by Drori and Teboulle (2014) and on convex interpolation results, and allows producing non-improvable worst-case analyzes. In other words, for a given algorithm, the methodology generates both worst-case certificates (i.e., proofs) and problem instances on which those bounds are achieved. Relying on this methodology, we study numerical worst-case performances of a few basic methods relying on inexact proximal operations including accelerated variants, and design a variant with optimized worst-case behaviour. We further illustrate how to extend the approach to support strongly convex objectives by studying a simple relatively inexact proximal minimization method.
翻译:在实际和理论(或高层次)优化方法中,最常见的原始方法是预兆操作。这种基本操作通常包括解决中间(希望更简单)优化问题。在这项工作中,我们调查了在解决中间优化问题时可以使用的不准确概念。然后,我们表明,对依赖这种不精确准操作的算法的最坏情况保障可以通过基于半不定期编程的通用程序系统获得。这种方法主要基于Drori和Teboulle(2014年)采用的方法以及 convex 互换结果,并允许产生不可改进的最坏情况分析。换句话说,对于特定的算法,该方法既产生最坏情况证书(即证据),又产生达到这些界限的问题实例。根据这种方法,我们研究依赖不精确的准操作的少数基本方法的最坏数字表现,包括加速变式,并设计一种最坏行为的变式。我们进一步说明,如何扩大该方法的范围,通过研究一个相对的简单方法来支持最坏的正反动方法,从而强有力地支持最坏情况目标。