Department of Mathematics, State University of New York at Buffalo, Buffalo, New York, United States of America.
Computational and Data-Enabled Sciences and Engineering Program, State University of New York at Buffalo, Buffalo, New York, United States of America.
PLoS Comput Biol. 2023 Sep 26;19(9):e1011494. doi: 10.1371/journal.pcbi.1011494. eCollection 2023 Sep.
Hypergraphs have been a useful tool for analyzing population dynamics such as opinion formation and the public goods game occurring in overlapping groups of individuals. In the present study, we propose and analyze evolutionary dynamics on hypergraphs, in which each node takes one of the two types of different but constant fitness values. For the corresponding dynamics on conventional networks, under the birth-death process and uniform initial conditions, most networks are known to be amplifiers of natural selection; amplifiers by definition enhance the difference in the strength of the two competing types in terms of the probability that the mutant type fixates in the population. In contrast, we provide strong computational evidence that a majority of hypergraphs are suppressors of selection under the same conditions by combining theoretical and numerical analyses. We also show that this suppressing effect is not explained by one-mode projection, which is a standard method for expressing hypergraph data as a conventional network. Our results suggest that the modeling framework for structured populations in addition to the specific network structure is an important determinant of evolutionary dynamics, paving a way to studying fixation dynamics on higher-order networks including hypergraphs.
超图一直是分析群体动态(如意见形成和公共物品博弈)的有用工具,这些群体动态发生在个体的重叠群体中。在本研究中,我们提出并分析了超图上的进化动力学,其中每个节点具有两种不同但恒定的适应值之一。对于传统网络上的相应动力学,在出生-死亡过程和均匀初始条件下,大多数网络被认为是自然选择的放大器;根据定义,放大器增强了两种竞争类型在突变型在种群中固定的概率方面的强度差异。相比之下,通过理论和数值分析相结合,我们提供了强有力的计算证据,证明在相同条件下,大多数超图都是选择的抑制剂。我们还表明,这种抑制效应不能通过单模投影来解释,单模投影是将超图数据表示为传统网络的标准方法。我们的结果表明,除了特定的网络结构之外,结构化群体的建模框架是进化动力学的一个重要决定因素,为研究包括超图在内的更高阶网络上的固定动力学铺平了道路。