论文标题
随机步行随机发展图
Random walks on randomly evolving graphs
论文作者
论文摘要
随机步行是图形上的基本随机过程,也是分布式算法设计中的密钥原始过程。随机步行的最重要特征之一是,在温和的条件下,它们会在及时收敛到固定分布,而该分布最多是图形大小的多项式。但是,这种基本属性仅在图表不会随着时间而变化时才能保持,而另一方面,许多分布式网络本质上是动态的,并且它们的拓扑受到了潜在的急剧变化。 在这项工作中,我们研究了随机变化随着时间的随机变化而随机变化的随机步行的混合(即融合)特性。具体来说,我们考虑了边缘 - 摩托维亚随机图模型:对于每个边缘插槽,有一个带有过渡概率$ p $(添加不存在的边缘)和$ q $的两态马尔可夫链和$ q $(删除现有边缘)。我们得出了几个正面和负面的结果,这些结果既取决于图的密度以及图形变化的速度。我们表明,如果$ p $很小(即低于erdős-rényi随机图的连接阈值),则随机步行不会混合(快速)。相反,当$ p $更大时,我们会观察到以下行为:如果图表随着时间的流逝而缓慢变化(即$ q $很小),则随机步行享有与静态图形上随机步行所具有的强大混合属性;但是,如果图形变化太快(即$ q $很大),则仅保留粗糙的混合属性。
A random walk is a basic stochastic process on graphs and a key primitive in the design of distributed algorithms. One of the most important features of random walks is that, under mild conditions, they converge to a stationary distribution in time that is at most polynomial in the size of the graph. This fundamental property, however, only holds if the graph does not change over time, while on the other hand many distributed networks are inherently dynamic, and their topology is subjected to potentially drastic changes. In this work we study the mixing (i.e., converging) properties of random walks on graphs subjected to random changes over time. Specifically, we consider the edge-Markovian random graph model: for each edge slot, there is a two-state Markov chain with transition probabilities $p$ (add a non-existing edge) and $q$ (remove an existing edge). We derive several positive and negative results that depend on both the density of the graph and the speed by which the graph changes. We show that if $p$ is very small (i.e., below the connectivity threshold of Erdős-Rényi random graphs), random walks do not mix (fast). When $p$ is larger, instead, we observe the following behavior: if the graph changes slowly over time (i.e., $q$ is small), random walks enjoy strong mixing properties that are comparable to the ones possessed by random walks on static graphs; however, if the graph changes too fast (i.e., $q$ is large), only coarse mixing properties are preserved.