Faster Monte-Carlo Algorithms for Fixation Probability of the Moran Process on Undirected Graphs
June 21, 2017 ยท Declared Dead ยท ๐ International Symposium on Mathematical Foundations of Computer Science
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Authors
Krishnendu Chatterjee, Rasmus Ibsen-Jensen, Martin A. Nowak
arXiv ID
1706.06931
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.DS
Citations
10
Venue
International Symposium on Mathematical Foundations of Computer Science
Last Checked
4 months ago
Abstract
Evolutionary graph theory studies the evolutionary dynamics in a population structure given as a connected graph. Each node of the graph represents an individual of the population, and edges determine how offspring are placed. We consider the classical birth-death Moran process where there are two types of individuals, namely, the residents with fitness 1 and mutants with fitness r. The fitness indicates the reproductive strength. The evolutionary dynamics happens as follows: in the initial step, in a population of all resident individuals a mutant is introduced, and then at each step, an individual is chosen proportional to the fitness of its type to reproduce, and the offspring replaces a neighbor uniformly at random. The process stops when all individuals are either residents or mutants. The probability that all individuals in the end are mutants is called the fixation probability. We present faster polynomial-time Monte-Carlo algorithms for finidng the fixation probability on undirected graphs. Our algorithms are always at least a factor O(n^2/log n) faster as compared to the previous algorithms, where n is the number of nodes, and is polynomial even if r is given in binary. We also present lower bounds showing that the upper bound on the expected number of effective steps we present is asymptotically tight for undirected graphs.
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