| Literature DB >> 26303622 |
S Auer1,2, J Heitzig2, U Kornek2, E Schöll1, J Kurths2,3,4,5,6.
Abstract
Complex networks describe the structure of many socio-economic systems. However, in studies of decision-making processes the evolution of the underlying social relations are disregarded. In this report, we aim to understand the formation of self-organizing domains of cooperation ("coalitions") on an acquaintance network. We include both the network's influence on the formation of coalitions and vice versa how the network adapts to the current coalition structure, thus forming a social feedback loop. We increase complexity from simple opinion adaptation processes studied in earlier research to more complex decision-making determined by costs and benefits, and from bilateral to multilateral cooperation. We show how phase transitions emerge from such coevolutionary dynamics, which can be interpreted as processes of great transformations. If the network adaptation rate is high, the social dynamics prevent the formation of a grand coalition and therefore full cooperation. We find some empirical support for our main results: Our model develops a bimodal coalition size distribution over time similar to those found in social structures. Our detection and distinguishing of phase transitions may be exemplary for other models of socio-economic systems with low agent numbers and therefore strong finite-size effects.Entities:
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Year: 2015 PMID: 26303622 PMCID: PMC4548196 DOI: 10.1038/srep13386
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Scheme of coevolution.
In each period, either one random cross-coalition links is replaced by an intra-coalitional link (adaptation with rate ϕ) or some random agent changes the coalition structure (coalition formation with rate 1 − ϕ), where each two members of a coalition must be connected by a path in the network.
Figure 2Acquaintance network with coalition structure (each color represents one coalition, black dots are singleton coalitions) for varying system size (columns: N = 300, N = 600 and N = 900) and adaptation rate (rows: ϕ = 0.97 and ϕ = 0.1). Note that some of the smaller network components consist of more than one coalition. Each network is the equilibrium result of one model run.
Figure 3Left (a–c) log-log plot of frequency distribution of all coalition sizes s and right (d–f) histograms P(S) of maximum coalition size S in the consensus state for ϕ = 0.2, ϕ = 0.8 and ϕ = 0.97, respectively. N = 300 and = 3 (for 500 model runs).
Figure 4Plot of (a) order parameter S, (b) coefficient of variation V and (c) S scaled with N− over control parameter ϕ for different agent numbers N. (d) Data collapse close to the critical point ϕ. S scaled with N− over (ϕ − ϕ) scaled with N. All variables are averaged over 100 model runs.