Divergent predictive states: The statistical complexity dimension of stationary, ergodic hidden Markov processes

Abstract

Even simply defined, finite-state generators produce stochastic processes that require tracking an uncountable infinity of probabilistic features for optimal prediction. For processes generated by hidden Markov chains, the consequences are dramatic. Their predictive models are generically infinite state. Until recently, one could determine neither their intrinsic randomness nor structural complexity. The prequel to this work introduced methods to accurately calculate the Shannon entropy rate (randomness) and to constructively determine their minimal (though, infinite) set of predictive features. Leveraging this, we address the complementary challenge of determining how structured hidden Markov processes are by calculating their statistical complexity dimension—the information dimension of the minimal set of predictive features. This tracks the divergence rate of the minimal memory resources required to optimally predict a broad class of truly complex processes.

Document Details

Document Type
Pub Defense Publication
Publication Date
Aug 01, 2021
Source ID
10.1063/5.0050460

Entities

People

  • Alexandra M. Jurgens
  • James P. Crutchfield

Organizations

  • Foundational Questions Institute
  • University of California, Davis

Tags

Readers

  • Computational Modeling and Simulation
  • Mathematical Modeling and Probability Theory.
  • Neural Network Machine Learning.