15 research outputs found

    Complete positivity and distance-avoiding sets

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    We introduce the cone of completely-positive functions, a subset of the cone of positive-type functions, and use it to fully characterize maximum-density distance-avoiding sets as the optimal solutions of a convex optimization problem. As a consequence of this characterization, it is possible to reprove and improve many results concerning distance-avoiding sets on the sphere and in Euclidean space.Comment: 57 pages; minor corrections in comparison to the previous versio

    Conic optimization with applications in finance and approximation theory

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    This dissertation explores conic optimization techniques with applications in the fields of finance and approximation theory. One of the most general types of conic optimization problems is the so-called generalized moment problem (GMP), which plays a fundamental part in this work. While being a powerful modeling framework, the GMP is notoriously difficult to solve. Semidefinite programming problems (SDPs) can be used to define approximation hierarchies for the GMP. The thesis includes an analysis of an interior point algorithm for SDPs, as well as a convergence analysis of an approximation hierarchy for the GMP defined over special sets. Additionally, the dissertation investigates the problem of pricing options that depend on multiple underlyings, which can be modeled as a GMP. Finally, the dissertation applies tools from conic optimization to address a classical question in approximation theory

    Calculating Sparse and Dense Correspondences for Near-Isometric Shapes

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    Comparing and analysing digital models are basic techniques of geometric shape processing. These techniques have a variety of applications, such as extracting the domain knowledge contained in the growing number of digital models to simplify shape modelling. Another example application is the analysis of real-world objects, which itself has a variety of applications, such as medical examinations, medical and agricultural research, and infrastructure maintenance. As methods to digitalize physical objects mature, any advances in the analysis of digital shapes lead to progress in the analysis of real-world objects. Global shape properties, like volume and surface area, are simple to compare but contain only very limited information. Much more information is contained in local shape differences, such as where and how a plant grew. Sadly the computation of local shape differences is hard as it requires knowledge of corresponding point pairs, i.e. points on both shapes that correspond to each other. The following article thesis (cumulative dissertation) discusses several recent publications for the computation of corresponding points: - Geodesic distances between points, i.e. distances along the surface, are fundamental for several shape processing tasks as well as several shape matching techniques. Chapter 3 introduces and analyses fast and accurate bounds on geodesic distances. - When building a shape space on a set of shapes, misaligned correspondences lead to points moving along the surfaces and finally to a larger shape space. Chapter 4 shows that this also works the other way around, that is good correspondences are obtain by optimizing them to generate a compact shape space. - Representing correspondences with a “functional map” has a variety of advantages. Chapter 5 shows that representing the correspondence map as an alignment of Green’s functions of the Laplace operator has similar advantages, but is much less dependent on the number of eigenvectors used for the computations. - Quadratic assignment problems were recently shown to reliably yield sparse correspondences. Chapter 6 compares state-of-the-art convex relaxations of graphics and vision with methods from discrete optimization on typical quadratic assignment problems emerging in shape matching

    Proceedings of the XIII Global Optimization Workshop: GOW'16

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    [Excerpt] Preface: Past Global Optimization Workshop shave been held in Sopron (1985 and 1990), Szeged (WGO, 1995), Florence (GO’99, 1999), Hanmer Springs (Let’s GO, 2001), Santorini (Frontiers in GO, 2003), San JosĂ© (Go’05, 2005), Mykonos (AGO’07, 2007), Skukuza (SAGO’08, 2008), Toulouse (TOGO’10, 2010), Natal (NAGO’12, 2012) and MĂĄlaga (MAGO’14, 2014) with the aim of stimulating discussion between senior and junior researchers on the topic of Global Optimization. In 2016, the XIII Global Optimization Workshop (GOW’16) takes place in Braga and is organized by three researchers from the University of Minho. Two of them belong to the Systems Engineering and Operational Research Group from the Algoritmi Research Centre and the other to the Statistics, Applied Probability and Operational Research Group from the Centre of Mathematics. The event received more than 50 submissions from 15 countries from Europe, South America and North America. We want to express our gratitude to the invited speaker Panos Pardalos for accepting the invitation and sharing his expertise, helping us to meet the workshop objectives. GOW’16 would not have been possible without the valuable contribution from the authors and the International ScientiïŹc Committee members. We thank you all. This proceedings book intends to present an overview of the topics that will be addressed in the workshop with the goal of contributing to interesting and fruitful discussions between the authors and participants. After the event, high quality papers can be submitted to a special issue of the Journal of Global Optimization dedicated to the workshop. [...

    Practical polynomial optimization through positivity certificates with and without denominators

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    Les certificats de positivitĂ© ou Positivstellens"atze fournissent des reprĂ©sentations de polynĂŽmes positifs sur des ensembles semialgĂ©briques de basiques, c'est-Ă -dire des ensembles dĂ©finis par un nombre fini d'inĂ©galitĂ©s polynomiales. Le cĂ©lĂšbre Positivstellensatz de Putinar stipule que tout polynĂŽme positif sur un ensemble semialgĂ©brique basique fermĂ© SS peut ĂȘtre Ă©crit comme une combinaison pondĂ©rĂ©e linĂ©aire des polynĂŽmes dĂ©crivant SS, sous une certaine condition sur SS lĂ©gĂšrement plus forte que la compacitĂ©. Lorsqu'il est Ă©crit comme ceci, il devient Ă©vident que le polynĂŽme est positif sur SS, et donc cette description alternative fournit un certificat de positivitĂ© sur SS. De plus, comme les poids polynomiaux impliquĂ©s dans le Positivstellensatz de Putinar sont des sommes de carrĂ©s (SOS), de tels certificats de positivitĂ© permettent de concevoir des relaxations convexes basĂ©es sur la programmation semidĂ©finie pour rĂ©soudre des problĂšmes d'optimisation polynomiale (POP) qui surviennent dans diverses applications rĂ©elles, par exemple dans la gestion des rĂ©seaux d'Ă©nergie et l'apprentissage automatique pour n'en citer que quelques unes. DĂ©veloppĂ©e Ă  l'origine par Lasserre, la hiĂ©rarchie des relaxations semidĂ©finies basĂ©e sur le Positivstellensatz de Putinar est appelĂ©e la emph{hiĂ©rarchie Moment-SOS}. Dans cette thĂšse, nous proposons des mĂ©thodes d'optimisation polynomiale basĂ©es sur des certificats de positivitĂ© impliquant des poids SOS spĂ©cifiques, sans ou avec dĂ©nominateurs.Positivity certificates or Positivstellens"atze provide representations of polynomials positive on basic semialgebraic sets, i.e., sets defined by finitely many polynomial inequalities. The famous Putinar's Positivstellensatz states that every positive polynomial on a basic closed semialgebraic set SS can be written as a linear weighted combination of the polynomials describing SS, under a certain condition on SS slightly stronger than compactness. When written in this it becomes obvious that the polynomial is positive on SS, and therefore this alternative description provides a certificate of positivity on SS. Moreover, as the polynomial weights involved in Putinar's Positivstellensatz are sums of squares (SOS), such Positivity certificates enable to design convex relaxations based on semidefinite programming to solve polynomial optimization problems (POPs) that arise in various real-life applications, e.g., in management of energy networks and machine learning to cite a few. Originally developed by Lasserre, the hierarchy of semidefinite relaxations based on Putinar's Positivstellensatz is called the emph{Moment-SOS hierarchy}. In this thesis, we provide polynomial optimization methods based on positivity certificates involving specific SOS weights, without or with denominators

    Uncertainty in Artificial Intelligence: Proceedings of the Thirty-Fourth Conference

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    Approximating the cone of copositive kernels to estimate the stability number of infinite graphs

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    It has been shown that the stable set problem in an infinite compact graph, and particularly the kissing number problem, reduces to an optimization problem over the cone of copositive kernels. We propose two converging hierarchies approximating this cone. Both are extensions of existing inner hierarchies for the finite dimensional copositive cone. We implement the first two levels of the new hierarchies for the kissing number problem
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