Autocatalytic sets and the growth of complexity in an evolutionary model
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A model of s interacting species is considered with two types of dynamical variables. The fast variables are the populations of the species and slow variables the links of a directed graph that defines the catalytic interactions among them. The graph evolves via mutations of the least fit species. Starting from a sparse random graph, we find that an autocatalytic set inevitably appears and triggers a cascade of exponentially increasing connectivity until it spans the whole graph. The connectivity subsequently saturates in a statistical steady state. The time scales for the appearance of an autocatalytic set in the graph and its growth have a power law dependence on s and the catalytic probability. At the end of the growth period the network is highly nonrandom, being localized on an exponentially small region of graph space for large s.
[1] M. Eigen,et al. The Hypercycle: A principle of natural self-organization , 2009 .
[2] F. Dyson. Origins of Life , 1985 .
[3] M. Marcus,et al. A Survey of Matrix Theory and Matrix Inequalities , 1965 .
[4] Charles E. Taylor,et al. Artificial Life II , 1991 .
[5] Stuart A. Kauffman,et al. ORIGINS OF ORDER , 2019, Origins of Order.