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arxiv: 0710.3566 · v1 · submitted 2007-10-18 · ⚛️ physics.soc-ph · physics.data-an

Markov Chain Methods For Analyzing Complex Transport Networks

classification ⚛️ physics.soc-ph physics.data-an
keywords networksnetworktransportgraphsrandomcommoditycomplexdefined
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We have developed a steady state theory of complex transport networks used to model the flow of commodity, information, viruses, opinions, or traffic. Our approach is based on the use of the Markov chains defined on the graph representations of transport networks allowing for the effective network design, network performance evaluation, embedding, partitioning, and network fault tolerance analysis. Random walks embed graphs into Euclidean space in which distances and angles acquire a clear statistical interpretation. Being defined on the dual graph representations of transport networks random walks describe the equilibrium configurations of not random commodity flows on primary graphs. This theory unifies many network concepts into one framework and can also be elegantly extended to describe networks represented by directed graphs and multiple interacting networks.

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