Data di Pubblicazione:
2022
Abstract:
We characterize the reachability probabilities in stochastic directed graphs by means of reinforcement learning methods. In particular, we show that the dynamics of the transition probabilities in a stochastic digraph can be modeled via a difference inclusion, which, in turn, can be interpreted as a Markov decision process. Using the latter framework, we offer a methodology to design reward functions to provide upper and lower bounds on the reachability probabilities of a set of nodes for stochastic digraphs. The effectiveness of the proposed technique is demonstrated by application to the diffusion of epidemic diseases over time-varying contact networks generated by the proximity patterns of mobile agents.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Directed graphs; Epidemics; Markov processes; Random variables; reachability analysis; reinforcement learning; Reinforcement learning; Stochastic digraphs; Time-varying systems; Topology
Elenco autori:
Frasca, Mattia; Possieri, Corrado
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