Fully lifted random duality theory

Mihailo Stojnic
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Abstract

We study a generic class of \emph{random optimization problems} (rops) and their typical behavior. The foundational aspects of the random duality theory (RDT), associated with rops, were discussed in \cite{StojnicRegRndDlt10}, where it was shown that one can often infer rops' behavior even without actually solving them. Moreover, \cite{StojnicRegRndDlt10} uncovered that various quantities relevant to rops (including, for example, their typical objective values) can be determined (in a large dimensional context) even completely analytically. The key observation was that the \emph{strong deterministic duality} implies the, so-called, \emph{strong random duality} and therefore the full exactness of the analytical RDT characterizations. Here, we attack precisely those scenarios where the strong deterministic duality is not necessarily present and connect them to the recent progress made in studying bilinearly indexed (bli) random processes in \cite{Stojnicnflgscompyx23,Stojnicsflgscompyx23}. In particular, utilizing a fully lifted (fl) interpolating comparison mechanism introduced in \cite{Stojnicnflgscompyx23}, we establish corresponding \emph{fully lifted} RDT (fl RDT). We then rely on a stationarized fl interpolation realization introduced in \cite{Stojnicsflgscompyx23} to obtain complete \emph{statitionarized} fl RDT (sfl RDT). A few well known problems are then discussed as illustrations of a wide range of practical applications implied by the generality of the considered rops.
完全解除随机对偶理论
研究了一类一般的\emph{随机优化问题}及其典型行为。与随机对偶理论(RDT)相关的基本方面在\cite{StojnicRegRndDlt10}中进行了讨论,其中表明即使没有实际解决它们,人们也可以经常推断出随机对偶理论的行为。此外,\cite{StojnicRegRndDlt10}发现,与绳索相关的各种数量(包括,例如,它们的典型客观值)甚至可以完全分析地确定(在大维度上下文中)。关键的观察是,\emph{强确定性二象性}意味着,所谓的\emph{强随机二象性},因此分析RDT表征的完全准确性。在这里,我们精确地攻击那些不一定存在强确定性对偶性的场景,并将它们与\cite{Stojnicnflgscompyx23,Stojnicsflgscompyx23}中研究双线性索引(bli)随机过程的最新进展联系起来。特别地,利用\cite{Stojnicnflgscompyx23}中介绍的全提升(fl)插值比较机制,我们建立了相应的\emph{全提升}RDT(fl RDT)。然后,我们依靠\cite{Stojnicsflgscompyx23}中介绍的平稳化fl插值实现来获得\emph{完全验证化}fl RDT (sfl RDT)。然后讨论一些众所周知的问题,以说明所考虑的绳索的普遍性所隐含的广泛的实际应用。
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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