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Reduction and classification of higher-order Markov chains

Author

Listed:
  • Gallesco, C.
  • Oliveira, C.T. Genovese Huss
  • Takahashi, D.Y.

Abstract

We study the class structure of finite-alphabet Markov chains with arbitrary memory length. To capture the structural constraints induced by prohibited transitions, we introduce the skeleton of a higher-order transition kernel, defined as a reduced set of contexts encoding all essential zero-probability patterns. To each skeleton we associate a binary transition matrix. We show that the communicating class structure of this matrix completely determines the recurrent classes of the original higher-order Markov chain, along with their periods. As a consequence, simple criteria for essential irreducibility and periodicity follow directly from the skeleton, without constructing the full first-order representation on the enlarged state space. From a practical perspective, this approach can yield significant computational gains. An example illustrates how the skeleton may have substantially smaller order than the original chain.

Suggested Citation

  • Gallesco, C. & Oliveira, C.T. Genovese Huss & Takahashi, D.Y., 2026. "Reduction and classification of higher-order Markov chains," Statistics & Probability Letters, Elsevier, vol. 236(C).
  • Handle: RePEc:eee:stapro:v:236:y:2026:i:c:s0167715226001513
    DOI: 10.1016/j.spl.2026.110787
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