{"title":"Gaining or losing perspective for convex multivariate functions on a simplex","authors":"Luze Xu, Jon Lee","doi":"10.1007/s10898-023-01356-y","DOIUrl":null,"url":null,"abstract":"<p>MINLO (mixed-integer nonlinear optimization) formulations of the disjunction between the origin and a polytope via a binary indicator variable have broad applicability in nonlinear combinatorial optimization, for modeling a fixed cost <i>c</i> associated with carrying out a set of <i>d</i> activities and a convex variable cost function <i>f</i> associated with the levels of the activities. The perspective relaxation is often used to solve such models to optimality in a branch-and-bound context, especially in the context in which <i>f</i> is univariate (e.g., in Markowitz-style portfolio optimization). But such a relaxation typically requires conic solvers and are typically not compatible with general-purpose NLP software which can accommodate additional classes of constraints. This motivates the study of weaker relaxations to investigate when simpler relaxations may be adequate. Comparing the volume (i.e., Lebesgue measure) of the relaxations as means of comparing them, we lift some of the results related to univariate functions <i>f</i> to the multivariate case. Along the way, we survey, connect and extend relevant results on integration over a simplex, some of which we concretely employ, and others of which can be used for further exploration on our main subject.</p>","PeriodicalId":15961,"journal":{"name":"Journal of Global Optimization","volume":"121 1","pages":""},"PeriodicalIF":1.8000,"publicationDate":"2024-01-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Global Optimization","FirstCategoryId":"100","ListUrlMain":"https://doi.org/10.1007/s10898-023-01356-y","RegionNum":3,"RegionCategory":"数学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"Mathematics","Score":null,"Total":0}
引用次数: 0
Abstract
MINLO (mixed-integer nonlinear optimization) formulations of the disjunction between the origin and a polytope via a binary indicator variable have broad applicability in nonlinear combinatorial optimization, for modeling a fixed cost c associated with carrying out a set of d activities and a convex variable cost function f associated with the levels of the activities. The perspective relaxation is often used to solve such models to optimality in a branch-and-bound context, especially in the context in which f is univariate (e.g., in Markowitz-style portfolio optimization). But such a relaxation typically requires conic solvers and are typically not compatible with general-purpose NLP software which can accommodate additional classes of constraints. This motivates the study of weaker relaxations to investigate when simpler relaxations may be adequate. Comparing the volume (i.e., Lebesgue measure) of the relaxations as means of comparing them, we lift some of the results related to univariate functions f to the multivariate case. Along the way, we survey, connect and extend relevant results on integration over a simplex, some of which we concretely employ, and others of which can be used for further exploration on our main subject.
MINLO(混合整数非线性优化)公式是通过二元指示变量对原点和多面体之间的析取,在非线性组合优化中具有广泛的适用性,可用于模拟与开展一组 d 项活动相关的固定成本 c 和与活动水平相关的凸变量成本函数 f。透视松弛法常用于在分支和边界情境中求解此类模型的最优性,尤其是在 f 是单变量的情境中(例如,在马科维茨式的组合优化中)。但这种松弛通常需要圆锥求解器,而且通常与能容纳更多类别约束的通用 NLP 软件不兼容。这就促使我们对较弱的松弛进行研究,以探究更简单的松弛何时可以满足要求。通过比较松弛的体积(即 Lebesgue 度量),我们将一些与单变量函数 f 相关的结果推广到多变量情况中。在此过程中,我们考察、连接并扩展了关于单纯形上积分的相关结果,其中一些我们已具体运用,另一些则可用于进一步探索我们的主要课题。
期刊介绍:
The Journal of Global Optimization publishes carefully refereed papers that encompass theoretical, computational, and applied aspects of global optimization. While the focus is on original research contributions dealing with the search for global optima of non-convex, multi-extremal problems, the journal’s scope covers optimization in the widest sense, including nonlinear, mixed integer, combinatorial, stochastic, robust, multi-objective optimization, computational geometry, and equilibrium problems. Relevant works on data-driven methods and optimization-based data mining are of special interest.
In addition to papers covering theory and algorithms of global optimization, the journal publishes significant papers on numerical experiments, new testbeds, and applications in engineering, management, and the sciences. Applications of particular interest include healthcare, computational biochemistry, energy systems, telecommunications, and finance. Apart from full-length articles, the journal features short communications on both open and solved global optimization problems. It also offers reviews of relevant books and publishes special issues.