Vasconcelos Vítor V, Santos Fernando P, Santos Francisco C, Pacheco Jorge M
INESC-ID and Instituto Superior Técnico, Universidade de Lisboa, 2744-016 Porto Salvo, Portugal.
Centro de Biologia Molecular e Ambiental da Universidade do Minho, 4710-057 Braga, Portugal.
Phys Rev Lett. 2017 Feb 3;118(5):058301. doi: 10.1103/PhysRevLett.118.058301. Epub 2017 Feb 1.
Studying dynamical phenomena in finite populations often involves Markov processes of significant mathematical and/or computational complexity, which rapidly becomes prohibitive with increasing population size or an increasing number of individual configuration states. Here, we develop a framework that allows us to define a hierarchy of approximations to the stationary distribution of general systems that can be described as discrete Markov processes with time invariant transition probabilities and (possibly) a large number of states. This results in an efficient method for studying social and biological communities in the presence of stochastic effects-such as mutations in evolutionary dynamics and a random exploration of choices in social systems-including situations where the dynamics encompasses the existence of stable polymorphic configurations, thus overcoming the limitations of existing methods. The present formalism is shown to be general in scope, widely applicable, and of relevance to a variety of interdisciplinary problems.
研究有限种群中的动力学现象通常涉及具有显著数学和/或计算复杂性的马尔可夫过程,随着种群规模的增加或个体配置状态数量的增加,这种复杂性会迅速变得令人望而却步。在这里,我们开发了一个框架,使我们能够定义一般系统平稳分布的近似层次结构,这些系统可以描述为具有时间不变转移概率和(可能)大量状态的离散马尔可夫过程。这产生了一种有效的方法,用于研究存在随机效应的社会和生物群落——例如进化动力学中的突变和社会系统中选择的随机探索——包括动力学涵盖稳定多态配置存在的情况,从而克服了现有方法的局限性。目前的形式主义被证明具有广泛的范围、广泛的适用性,并且与各种跨学科问题相关。