稀疏随机图匹配数的中心极限定理

IF 1 2区 数学 Q1 MATHEMATICS
Margalit Glasgow, Matthew Kwan, Ashwin Sah, Mehtaab Sawhney
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引用次数: 0

摘要

1981年,Karp和Sipser在一篇有影响力的论文中证明了稀疏随机图Erdős-Rényi匹配数的大数定律,开创了分析随机图过程的所谓微分方程方法。我们加强了这一经典结果,并回答了Aronson, Frieze和Pittel的一个问题,在同样的情况下证明了一个中心极限定理:稀疏随机图的匹配数涨落是渐近高斯的。我们的新贡献是根据Karp和Sipser首先观察到的著名的相变算法,在亚临界和临界状态下证明了这个中心极限定理。事实上,在超临界状态下,最近krea iki的博士论文已经证明了一个中心极限定理,使用微分方程方法的随机推广(将所谓的Karp-Sipser过程与随机微分方程系统进行比较)。我们的证明建立在这些方法的基础上,并引入了新的技术来处理存在于亚临界和临界情况下的某些简并性。奇怪的是,我们的新技术导致了一个非建设性的结果:我们能够描述匹配数在其平均值附近的波动,尽管这些波动远小于我们对平均值的最佳估计中的误差项。我们还证明了稀疏随机图邻接矩阵秩的中心极限定理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A central limit theorem for the matching number of a sparse random graph

In 1981, Karp and Sipser proved a law of large numbers for the matching number of a sparse Erdős–Rényi random graph, in an influential paper pioneering the so-called differential equation method for analysis of random graph processes. Strengthening this classical result, and answering a question of Aronson, Frieze and Pittel, we prove a central limit theorem in the same setting: the fluctuations in the matching number of a sparse random graph are asymptotically Gaussian. Our new contribution is to prove this central limit theorem in the subcritical and critical regimes, according to a celebrated algorithmic phase transition first observed by Karp and Sipser. Indeed, in the supercritical regime, a central limit theorem has recently been proved in the PhD thesis of Kreačić, using a stochastic generalisation of the differential equation method (comparing the so-called Karp–Sipser process to a system of stochastic differential equations). Our proof builds on these methods, and introduces new techniques to handle certain degeneracies present in the subcritical and critical cases. Curiously, our new techniques lead to a non-constructive result: we are able to characterise the fluctuations of the matching number around its mean, despite these fluctuations being much smaller than the error terms in our best estimates of the mean. We also prove a central limit theorem for the rank of the adjacency matrix of a sparse random graph.

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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
186
审稿时长
6-12 weeks
期刊介绍: The Journal of the London Mathematical Society has been publishing leading research in a broad range of mathematical subject areas since 1926. The Journal welcomes papers on subjects of general interest that represent a significant advance in mathematical knowledge, as well as submissions that are deemed to stimulate new interest and research activity.
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