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Main Authors: Hjort, Nils Lid, Varin, Cristiano
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.20978
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author Hjort, Nils Lid
Varin, Cristiano
author_facet Hjort, Nils Lid
Varin, Cristiano
contents In many spatial and spatial-temporal models, and more generally in models with complex dependencies, it may be too difficult to carry out full maximum likelihood (ML) analysis. Remedies include the use of pseudo-likelihood (PL) and quasi-likelihood (QL) (also called the composite likelihood). The present article studies the ML, the PL and the QL methods for general Markov chain models, partly motivated by the desire to understand the precise behaviour of PL and QL methods in settings where this can be analysed. We present limiting normality results and compare performances in different settings. The PL and QL methods can be seen as maximum penalised likelihood methods. We find that the QL strategy is typically preferable to the PL, and that it loses very little to the ML, while earning in model robustness. It has also appeal and potential as a modelling tool. Our methods are illustrated for analysis of DNA sequence evolution type models.
format Preprint
id arxiv_https___arxiv_org_abs_2604_20978
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ML, PL, QL in Markov chain models
Hjort, Nils Lid
Varin, Cristiano
Methodology
In many spatial and spatial-temporal models, and more generally in models with complex dependencies, it may be too difficult to carry out full maximum likelihood (ML) analysis. Remedies include the use of pseudo-likelihood (PL) and quasi-likelihood (QL) (also called the composite likelihood). The present article studies the ML, the PL and the QL methods for general Markov chain models, partly motivated by the desire to understand the precise behaviour of PL and QL methods in settings where this can be analysed. We present limiting normality results and compare performances in different settings. The PL and QL methods can be seen as maximum penalised likelihood methods. We find that the QL strategy is typically preferable to the PL, and that it loses very little to the ML, while earning in model robustness. It has also appeal and potential as a modelling tool. Our methods are illustrated for analysis of DNA sequence evolution type models.
title ML, PL, QL in Markov chain models
topic Methodology
url https://arxiv.org/abs/2604.20978