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Effective Nondeterministic Positive Definiteness Test for Unidiagonal Integral Matrices

机译:单对角积分矩阵的有效非确定性正定性检验

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For standard algorithms verifying positive definiteness of a matrix A ∈ Mn(R) based on Sylvester's criterion, the computationally pessimistic case is this when A is positive definite. We present an algorithm realizing the same task for A ∈ Mn(Z), for which the case when A is positive definite is the optimistic one. The algorithm relies on performing certain edge transformations, called inflations, on the signed graph (bigraph) Δ = Δ(A) associated with A. We provide few variants of the algorithm, including Las Vegas type randomized ones (with precisely described maximal number of steps). The algorithms work very well in practice, in many cases with a better speed than the standard tests. On the other hand, our results provide an interesting example of an application of symbolic computing methods originally developed for different purposes, with a big potential for further generalizations in matrix problems.
机译:对于基于Sylvester准则验证矩阵A∈Mn(R)的正定性的标准算法,当A为正定时,在计算上是悲观的情况。我们提出了一种对A∈Mn(Z)实现相同任务的算法,对于该算法,当A为正定时就是乐观的情况。该算法依赖于对与A相关的有符号图(图)Δ=Δ(A)进行某些边缘变换(称为通货膨胀)。我们提供了该算法的几种变体,包括拉斯维加斯类型的随机变体(精确描述了最大数量的脚步)。该算法在实践中效果很好,在许多情况下,其速度都比标准测试快。另一方面,我们的结果提供了一个有趣的示例,说明了最初为不同目的而开发的符号计算方法的应用,在矩阵问题的进一步推广方面具有很大的潜力。

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