论文标题

从均匀顶点开始加快随机步行混合

Speeding up random walk mixing by starting from a uniform vertex

论文作者

Díaz, Alberto Espuny, Morris, Patrick, Perarnau, Guillem, Serra, Oriol

论文摘要

快速混合随机步行的理论在现代随机算法的研究中起着基本作用。通常,将混合时间相对于最坏的初始位置进行测量。众所周知,在图形上混合的瓶颈存在,尤其是从小瓶颈内部开始,在过程的第一步中显着减慢了步行的扩散。平均混合时间定义为从均匀随机顶点开始的混合时间,因此对这些瓶颈引起的缓慢扩散不敏感。 在本文中,我们提供了一个通用框架,以显示对数平均混合时间的随机散步时间,并带有小瓶颈。该框架对于具有异质特性的某些随机图的家族特别有效。我们在两个随机型号上演示了其适用性,该模型已知混合时间为订单$(\ log n)^2 $,将混合加快订单$ \ log n $。首先,在对连接图的平滑分析的背景下,我们显示了对数平均混合时间,用于随机扰动的趋同图。特定的实例是纽曼瓦特小世界模型。其次,我们显示了对数超验证扩展器图的对数平均混合时间。当主机图完成后,该应用程序提供了另一种证据,证明超临界Erdős-rényi图中巨型组件的平均混合时间是对数。

The theory of rapid mixing random walks plays a fundamental role in the study of modern randomised algorithms. Usually, the mixing time is measured with respect to the worst initial position. It is well known that the presence of bottlenecks in a graph hampers mixing and, in particular, starting inside a small bottleneck significantly slows down the diffusion of the walk in the first steps of the process. The average mixing time is defined to be the mixing time starting at a uniformly random vertex and hence is not sensitive to the slow diffusion caused by these bottlenecks. In this paper we provide a general framework to show logarithmic average mixing time for random walks on graphs with small bottlenecks. The framework is especially effective on certain families of random graphs with heterogeneous properties. We demonstrate its applicability on two random models for which the mixing time was known to be of order $(\log n)^2$, speeding up the mixing to order $\log n$. First, in the context of smoothed analysis on connected graphs, we show logarithmic average mixing time for randomly perturbed graphs of bounded degeneracy. A particular instance is the Newman-Watts small-world model. Second, we show logarithmic average mixing time for supercritically percolated expander graphs. When the host graph is complete, this application gives an alternative proof that the average mixing time of the giant component in the supercritical Erdős-Rényi graph is logarithmic.

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