Information Flow in Markov Chains

CDC(2021)

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摘要
We consider the problem of characterizing the flow of information in stochastic systems. Recently, several measures of partial information decomposition (PID) have been proposed which, for a fixed target variable, can distinguish unique, redundant, and synergistic contributions from the predictor variables. We study how each of those partial informations travel in a Markov chain, entering at one variable, passing through several variables, and eventually exiting downstream. Our work is agnostic to specific partial information decomposition (PID) measures. We investigate partial information flow among variables relating to overflow events in a river system.
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关键词
Markov chain,specific partial information decomposition measures,PID,partial information flow,river system,stochastic systems,fixed target,synergistic contributions,predictor variables,partial informations travel
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