Failure of maximum likelihood methods for chaotic dynamical systems

Kevin Judd
Phys. Rev. E 75, 036210 – Published 15 March 2007

Abstract

The maximum likelihood method is a basic statistical technique for estimating parameters and variables, and is the starting point for many more sophisticated methods, like Bayesian methods. This paper shows that maximum likelihood fails to identify the true trajectory of a chaotic dynamical system, because there are trajectories that appear to be far more (infinitely more) likely than truth. This failure occurs for unbounded noise and for bounded noise when it is sufficiently large and will almost certainly have consequences for parameter estimation in such systems. The reason for the failure is rather simple; in chaotic dynamical systems there can be trajectories that are consistently closer to the observations than the true trajectory being observed, and hence their likelihood dominates truth. The residuals of these truth-dominating trajectories are not consistent with the noise distribution; they would typically have too small standard deviation and many outliers, and hence the situation may be remedied by using methods that examine the distribution of residuals and are not entirely maximum likelihood based.

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  • Received 23 June 2006

DOI:https://doi.org/10.1103/PhysRevE.75.036210

©2007 American Physical Society

Authors & Affiliations

Kevin Judd

  • School of Mathematics and Statistics, University of Western Australia, Perth, Australia

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Issue

Vol. 75, Iss. 3 — March 2007

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