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arxiv: 1611.01099 · v1 · pith:SJZCG4OKnew · submitted 2016-11-03 · ❄️ cond-mat.stat-mech · cs.IT· math.IT· math.ST· nlin.CD· stat.TH

Informational and Causal Architecture of Continuous-time Renewal and Hidden Semi-Markov Processes

classification ❄️ cond-mat.stat-mech cs.ITmath.ITmath.STnlin.CDstat.TH
keywords modelsprocessessemi-markovcontinuous-timehiddenanalysiscausaldifferential
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We introduce the minimal maximally predictive models ({\epsilon}-machines) of processes generated by certain hidden semi-Markov models. Their causal states are either hybrid discrete-continuous or continuous random variables and causal-state transitions are described by partial differential equations. Closed-form expressions are given for statistical complexities, excess entropies, and differential information anatomy rates. We present a complete analysis of the {\epsilon}-machines of continuous-time renewal processes and, then, extend this to processes generated by unifilar hidden semi-Markov models and semi-Markov models. Our information-theoretic analysis leads to new expressions for the entropy rate and the rates of related information measures for these very general continuous-time process classes.

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