Article ID Journal Published Year Pages File Type
1129541 Social Networks 2013 8 Pages PDF
Abstract

What makes economic and ecological networks so unlike other highly skewed networks in their tendency toward turbulence and collapse? Here, we explore the consequences of a defining feature of these networks: their nodes are tied together by flow. We show that flow networks tend to the power law degree distribution (PLDD) due to a self-reinforcing process involving position within the global network structure, and thus present the first random graph model for PLDDs that does not depend on a rich-get-richer function of nodal degree. We also show that in contrast to non-flow networks, PLDD flow networks are dramatically more vulnerable to catastrophic failure than non-PLDD flow networks, a finding with potential explanatory power in our age of resource- and financial-interdependence and turbulence.

► We show how dependence on position gives flow networks have an intrinsic tendency to skewed degree distributions. ► Flow networks have an intrinsic tendency to collapse when in a power-law degree distribution. ► We present the first non-rich-get-richer algorithm to explain power law degree distributions.

Related Topics
Physical Sciences and Engineering Mathematics Statistics and Probability
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