通过最小和求二次函数的无约束最小化

Nicholas Ruozzi, S. Tatikonda
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引用次数: 4

摘要

高斯信念传播算法是一种计算多元高斯分布均值的迭代算法。同样,最小和算法可用于计算多元正定二次函数的最小值。虽然这些算法的收敛性和正确性的简单充分条件是已知的,但这些算法可能无法收敛到正确的解,即使局限于正定二次函数。在这项工作中,我们提出了对GaBP中使用的典型因子分解的一种新颖的改变,使我们能够构建一个GaBP的变体,该变体可以解决任意正半定矩阵的最小化问题,同时仍然保留GaBP的分布式消息传递性质。我们证明了新的因式分解避免了标准因式分解的主要缺陷,并且我们经验地证明了该算法可以用于解决标准GaBP算法无法解决的问题。由于二次最小化等价于求解一个线性方程组,因此本文的工作在许多应用领域都可以应用于求解大型正半定线性系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unconstrained minimization of quadratic functions via min-sum
Gaussian belief propagation is an iterative algorithm for computing the mean of a multivariate Gaussian distribution. Equivalently, the min-sum algorithm can be used to compute the minimum of a multivariate positive definite quadratic function. Although simple sufficient conditions that guarantee the convergence and correctness of these algorithms are known, the algorithms may fail to converge to the correct solution even when restricted to only positive definite quadratic functions. In this work, we propose a novel change to the typical factorization used in GaBP that allows us to construct a variant of GaBP that can solve the minimization problem for arbitrary positive semidefinite matrices while still preserving the distributed message passing nature of GaBP. We prove that the new factorization avoids the major pitfalls of the standard factorization, and we demonstrate empirically that the algorithm can be used to solve problems for which the standard GaBP algorithm would have failed. As quadratic minimization is equivalent to solving a system of linear equations, this work can be applied to solve large positive semidefinite linear systems in many application areas.
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