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A randomized cutting plane method with probabilistic geometric convergence

机译:具有概率几何收敛性的随机割平面方法

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We propose a randomized method for general convex optimization problems; namely, the minimization of a linear function over a convex body. The idea is to generate N random points inside the body, choose the best one, and cut the part of the body defined by the linear constraint. We analyze the convergence properties of the algorithm from a theoretical viewpoint, i.e., under the rather standard assumption that an algorithm for uniform generation of random points in the convex body is available. Under this assumption, the expected rate of convergence for such method is proved to be geometric. This analysis is based on new results on the statistical properties of the empirical minimum over a convex body that we obtained in this paper. Moreover, explicit sample size results on convergence are derived. In particular, we compute the minimum number of random points that should be generated at each step in order to guarantee that, in a probabilistic sense, the method performs better than the deterministic center-of-gravity algorithm. From a practical viewpoint, we show how the method can be implemented using hit-and-run versions of Markov-chain Monte Carlo algorithms and exemplify the performance of this implementable modification via a number of illustrative problems. A crucial notion for the hit-and-run implementation is that of boundary oracle, which is available for most optimization problems including linear matrix inequalities and many other kinds of constraints. Preliminary numerical results for semidefinite programs are presented confirming that the randomized approach might be competitive to modern deterministic convex optimization methods.
机译:对于一般的凸优化问题,我们提出了一种随机方法。即,使凸体上的线性函数最小化。这个想法是在体内生成N个随机点,选择最佳的一个,并切掉由线性约束定义的身体部分。我们从理论的角度分析算法的收敛性,即在相当标准的假设下可以使用在凸体内均匀生成随机点的算法。在此假设下,该方法的预期收敛速度被证明是几何的。该分析基于我们在本文中获得的关于凸体上经验最小值的统计特性的新结果。此外,得出了关于收敛的显式样本量结果。特别是,我们计算每个步骤应生成的最小随机点数,以确保在概率意义上该方法的性能优于确定性重心算法。从实践的角度来看,我们展示了如何使用马尔可夫链蒙特卡洛算法的即插即用版本来实现该方法,并通过许多说明性问题来举例说明这种可实现的修改的性能。即插即用实现的一个关键概念是边界预言,它可用于大多数优化问题,包括线性矩阵不等式和许多其他类型的约束。给出了半确定程序的初步数值结果,证实了该随机方法可能比现代确定性凸优化方法更具竞争力。

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