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Approximating Fixation Probabilities in the Generalized Moran Process

机译:近似于普通莫兰过程中的固定概率

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We consider the Moran process, as generalized by Lieberman, Hauert and Nowak (Nature, 433:312-316, 2005). A population resides on the vertices of a finite, connected, undirected graph and, at each time step, an individual is chosen at random with probability proportional to its assigned "fitness" value. It reproduces, placing a copy of itself on a neighbouring vertex chosen uniformly at random, replacing the individual that was there. The initial population consists of a single mutant of fitness r > 0 placed uniformly at random, with every other vertex occupied by an individual of fitness 1. The main quantities of interest are the probabilities that the descendants of the initial mutant come to occupy the whole graph (fixation) and that they die out (extinction); almost surely, these are the only possibilities. In general, exact computation of these quantities by standard Markov chain techniques requires solving a system of linear equations of size exponential in the order of the graph so is not feasible. We show that, with high probability, the number of steps needed to reach fixation or extinction is bounded by a polynomial in the number of vertices in the graph. This bound allows us to construct fully polynomial randomized approximation schemes (FPRAS) for the probability of fixation (when r > 1) and of extinction (for all r > 0).
机译:我们认为莫兰工艺,由Lieberman,Hauert和Nowak(大自然,433:312-316,2005)概括。群体驻留在有限,连接,无向图的顶点上,并且在每个时间步骤中,以与其分配的“健身”值成比例的概率随机选择单独的。它再现,将自身的副本放在随机选择的邻近顶点上,替换那里的个体。初始群体由一个均匀的健身R> 0的单个突变体组成,其余的每个其他顶点由健身1.初始突变体的后代占据整体的概率是概率图(固定),它们消失(灭绝);几乎肯定地,这些是唯一的可能性。通常,通过标准马尔可夫链技术对这些数量的精确计算需要在图表的顺序中求解尺寸指数的线性方程系统,因此是不可行的。我们表明,具有高概率,达到固定或灭绝所需的步骤数由图形中顶点的数量中的多项式界定。这界允许我们构建完全多项式随机近似方案(FPRAS),用于固定的概率(当R> 1时)和灭绝(对于所有R> 0)。

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