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Inference of Markov models from trajectories via large deviations at level 2.5 with applications to random walks in disordered media

Cécile Monthus

2021Journal of Statistical Mechanics Theory and Experiment22 citationsDOIOpen Access PDF

Abstract

Abstract The inference of Markov models from data on stochastic dynamical trajectories over the large time-window T is revisited via the large deviations at level 2.5 for the time-empirical density and the time-empirical flows. The goal is to obtain the large deviations properties for the probability distribution of the inferred Markov parameters in order to characterize their possible fluctuations around the true Markov parameters for large T . The explicit rate functions are given for several settings, namely discrete-time Markov chains, continuous-time Markov jump processes, and diffusion processes in dimension d . Applications to various models of random walks in disordered media are described, where the goal is to infer the quenched disordered variables defining a given disordered sample.

Topics & Concepts

Markov chainStatistical physicsRandom walkVariable-order Markov modelMarkov processLarge deviations theoryMarkov modelMathematicsInferenceDimension (graph theory)Markov propertyJumpComputer scienceStatisticsPhysicsCombinatoricsArtificial intelligenceQuantum mechanicsTheoretical and Computational PhysicsAdvanced Thermodynamics and Statistical MechanicsMarkov Chains and Monte Carlo Methods
Inference of Markov models from trajectories via large deviations at level 2.5 with applications to random walks in disordered media | Litcius