Large deviations and full Edgeworth expansions for finite Markov chains with applications to the analysis of genomic sequences

Pierre Pudlo

ESAIM: Probability and Statistics (2010)

  • Volume: 14, page 435-455
  • ISSN: 1292-8100

Abstract

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To establish lists of words with unexpected frequencies in long sequences, for instance in a molecular biology context, one needs to quantify the exceptionality of families of word frequencies in random sequences. To this aim, we study large deviation probabilities of multidimensional word counts for Markov and hidden Markov models. More specifically, we compute local Edgeworth expansions of arbitrary degrees for multivariate partial sums of lattice valued functionals of finite Markov chains. This yields sharp approximations of the associated large deviation probabilities. We also provide detailed simulations. These exhibit in particular previously unreported periodic oscillations, for which we provide theoretical explanations.

How to cite

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Pudlo, Pierre. "Large deviations and full Edgeworth expansions for finite Markov chains with applications to the analysis of genomic sequences." ESAIM: Probability and Statistics 14 (2010): 435-455. <http://eudml.org/doc/250827>.

@article{Pudlo2010,
abstract = { To establish lists of words with unexpected frequencies in long sequences, for instance in a molecular biology context, one needs to quantify the exceptionality of families of word frequencies in random sequences. To this aim, we study large deviation probabilities of multidimensional word counts for Markov and hidden Markov models. More specifically, we compute local Edgeworth expansions of arbitrary degrees for multivariate partial sums of lattice valued functionals of finite Markov chains. This yields sharp approximations of the associated large deviation probabilities. We also provide detailed simulations. These exhibit in particular previously unreported periodic oscillations, for which we provide theoretical explanations. },
author = {Pudlo, Pierre},
journal = {ESAIM: Probability and Statistics},
keywords = {Markov chains; hidden Markov models; large deviations; edgeworth expansions; protein and DNA sequences; Edgeworth expansions},
language = {eng},
month = {12},
pages = {435-455},
publisher = {EDP Sciences},
title = {Large deviations and full Edgeworth expansions for finite Markov chains with applications to the analysis of genomic sequences},
url = {http://eudml.org/doc/250827},
volume = {14},
year = {2010},
}

TY - JOUR
AU - Pudlo, Pierre
TI - Large deviations and full Edgeworth expansions for finite Markov chains with applications to the analysis of genomic sequences
JO - ESAIM: Probability and Statistics
DA - 2010/12//
PB - EDP Sciences
VL - 14
SP - 435
EP - 455
AB - To establish lists of words with unexpected frequencies in long sequences, for instance in a molecular biology context, one needs to quantify the exceptionality of families of word frequencies in random sequences. To this aim, we study large deviation probabilities of multidimensional word counts for Markov and hidden Markov models. More specifically, we compute local Edgeworth expansions of arbitrary degrees for multivariate partial sums of lattice valued functionals of finite Markov chains. This yields sharp approximations of the associated large deviation probabilities. We also provide detailed simulations. These exhibit in particular previously unreported periodic oscillations, for which we provide theoretical explanations.
LA - eng
KW - Markov chains; hidden Markov models; large deviations; edgeworth expansions; protein and DNA sequences; Edgeworth expansions
UR - http://eudml.org/doc/250827
ER -

References

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