凸代数几何与半定优化

P. Parrilo
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引用次数: 9

摘要

在过去的十年里,人们对多元多项式定义的最优化问题的代数方法产生了浓厚的兴趣。在这个领域出现的基本数学挑战包括理解非负多项式的结构,代数集的不同表示的效率和复杂性之间的相互作用,以及有效算法的发展。值得注意的是,也许出乎意料的是,凸性为解决这些问题提供了一个新的观点和一个强大的框架。这自然将我们带到了代数几何、优化和凸几何的交叉点,重点是算法和计算。这个新兴领域被称为凸代数几何。本教程将重点介绍凸代数几何的基本和最新发展,以及基于半定规划的涉及多项式方程和不等式的优化问题的相关计算方法。通过将实际代数几何中的理论结果与半定规划相结合,开发出解决这些问题的有效计算方法,近年来取得了很大进展。我们将特别强调平方和分解,一般对偶性质,不可行性证明,近似/不近似结果,以及调查在过去几年中发生的许多令人兴奋的发展。
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Convex algebraic geometry and semidefinite optimization
In the past decade there has been a surge of interest in algebraic approaches to optimization problems defined by multivariate polynomials. Fundamental mathematical challenges that arise in this area include understanding the structure of nonnegative polynomials, the interplay between efficiency and complexity of different representations of algebraic sets, and the development of effective algorithms. Remarkably, and perhaps unexpectedly, convexity provides a new viewpoint and a powerful framework for addressing these questions. This naturally brings us to the intersection of algebraic geometry, optimization, and convex geometry, with an emphasis on algorithms and computation. This emerging area has become known as convex algebraic geometry. This tutorial will focus on basic and recent developments in convex algebraic geometry, and the associated computational methods based on semidefinite programming for optimization problems involving polynomial equations and inequalities. There has been much recent progress, by combining theoretical results in real algebraic geometry with semidefinite programming to develop effective computational approaches to these problems. We will make particular emphasis on sum of squares decompositions, general duality properties, infeasibility certificates, approximation/inapproximability results, as well as survey the many exciting developments that have taken place in the last few years.
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