Evolutionary Dynamics on Graphs: Invited Talk

L. A. Goldberg
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引用次数: 3

Abstract

The Moran process [5], as adapted by Lieberman, Hauert and Nowak [4], is a discrete-time random process which models the spread of genetic mutations through populations. Individuals are modelled as the vertices of a graph. Each vertex is either infected or uninfected. The model has a parameter r > 0. Infected vertices have fitness r and uninfected vertices have fitness 1. At each step, an individual is selected to reproduce with probability proportional to its fitness. This vertex chooses one of its neighbours uniformly at random and updates the state of that neighbour (infected or not) to match its own. In the initial state, one vertex is chosen uniformly at random to be infected and the other vertices are uninfected. If the graph is strongly connected then the process will terminate with probability 1, either in the state where every vertex is infected (known as fixation) or in the state where no vertex is infected (known as extinction). The principal quantities of interest are the fixation probability (the probability of reaching fixation) and the expected absorption time (the expected number of steps before fixation or extinction is reached). In general, these depend on both the graph topology and the parameter r. We study three questions.
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图上的进化动力学:特邀演讲
由Lieberman、Hauert和Nowak[4]改编的Moran过程[5]是一个离散时间随机过程,它模拟了基因突变在人群中的传播。个体被建模为图的顶点。每个顶点要么被感染,要么未被感染。模型参数r > 0。感染顶点的适应度为r,未感染顶点的适应度为1。在每一步中,选择一个个体以与其适合度成比例的概率进行繁殖。该顶点均匀随机地选择一个邻居,并更新该邻居的状态(无论是否受感染)以匹配自己的状态。在初始状态下,均匀随机选择一个顶点被感染,其他顶点未被感染。如果图是强连接的,那么这个过程将以概率为1的方式终止,要么是在每个顶点都被感染的状态下(称为固定),要么是在没有顶点被感染的状态下(称为灭绝)。关注的主要量是固定概率(达到固定的概率)和预期吸收时间(达到固定或消光前的预期步数)。一般来说,这些都取决于图拓扑和参数r。我们研究了三个问题。
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