Journal of Physics A: Mathematical and Theoretical | 2021

Bayesian inference of Lévy walks via hidden Markov models

 
 
 
 
 

Abstract


The Lévy walk is a non-Brownian random walk model that has been found to describe anomalous dynamic phenomena in diverse fields ranging from biology over quantum physics to ecology. Recurrently occurring problems are to examine whether observed data are successfully quantified by a model classified as Lévy walks or not and extract the best model parameters in accordance with the data. Motivated by such needs, we propose a hidden Markov model for Lévy walks and computationally realize and test the corresponding Bayesian inference method. We introduce a Markovian decomposition scheme to approximate a renewal process governed by a power-law waiting time distribution. Using this, we construct the likelihood function of Lévy walks based on a hidden Markov model and the forward algorithm. With the Lévy walk trajectories simulated at various conditions, we perform the Bayesian inference for parameter estimation and model classification. We show that the power-law exponent of the flight-time distribution can be successfully extracted even at the condition that the mean-squared displacement does not display the expected scaling exponent due to the noise or insufficient trajectory length. It is also demonstrated that the Bayesian method performs remarkably inferring the Lévy walk trajectories from given unclassified trajectory data set if the noise level is moderate.

Volume None
Pages None
DOI 10.1088/1751-8121/ac31a1
Language English
Journal Journal of Physics A: Mathematical and Theoretical

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