
doi: 10.15195/v7.a20
handle: 11583/2848239
We propose a model of Markovian quantity flows on connected networks that relaxes several properties of the standard compartmental Markov process. The motivation of our generalization are social science applications of the standard model that do not comport with its steady state predictions. The proposed generalization relaxes the predictions that every node belonging to the same nontrivial strong component of a network must acquire the same fraction of its members’ initial quantities and that the sink component(s) of the network must absorb all of the system’s available initial quantity. For example, when applied to refugee flows from a nation in chaos to other nations on a network with one or more sink nations, the standard model predicts that all the refugees will be eventually located in the sink(s) of the network and none that will permanently locate themselves in the nations along the paths to the sink(s). We illustrate this and several other social science applications to which our proposed model is applicable.
markov chains, Markov chains, compartmental systems, HM401-1281, Human Society, Sociology, Compartmental Systems, Markov Chains, Networks, Quantity Flows, Social Science, social science, networks, quantity flows, Sociology (General)
markov chains, Markov chains, compartmental systems, HM401-1281, Human Society, Sociology, Compartmental Systems, Markov Chains, Networks, Quantity Flows, Social Science, social science, networks, quantity flows, Sociology (General)
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