PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models

Datasets displaying temporal dependencies abound in science and engineering applications, with Markov models representing a simplified and popular view of the temporal dependence structure. In this paper, we consider Bayesian settings that place prior distributions over the parameters of the transit...

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Main Authors: Imon Banerjee, Vinayak A. Rao, Harsha Honnappa
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/23/3/313
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spelling doaj-1c945001e99649f680f853e3af30d4242021-03-07T00:01:57ZengMDPI AGEntropy1099-43002021-03-012331331310.3390/e23030313PAC-Bayes Bounds on Variational Tempered Posteriors for Markov ModelsImon Banerjee0Vinayak A. Rao1Harsha Honnappa2Department of Statistics, Purdue University, West Lafayette, IN 47907, USADepartment of Statistics, Purdue University, West Lafayette, IN 47907, USASchool of Industrial Engineering, Purdue University, West Lafayette, IN 47907, USADatasets displaying temporal dependencies abound in science and engineering applications, with Markov models representing a simplified and popular view of the temporal dependence structure. In this paper, we consider Bayesian settings that place prior distributions over the parameters of the transition kernel of a Markov model, and seek to characterize the resulting, typically intractable, posterior distributions. We present a Probably Approximately Correct (PAC)-Bayesian analysis of variational Bayes (VB) approximations to tempered Bayesian posterior distributions, bounding the model risk of the VB approximations. Tempered posteriors are known to be robust to model misspecification, and their variational approximations do not suffer the usual problems of over confident approximations. Our results tie the risk bounds to the mixing and ergodic properties of the Markov data generating model. We illustrate the PAC-Bayes bounds through a number of example Markov models, and also consider the situation where the Markov model is misspecified.https://www.mdpi.com/1099-4300/23/3/313ergodicityMarkov chainprobably approximately correctvariational Bayes
collection DOAJ
language English
format Article
sources DOAJ
author Imon Banerjee
Vinayak A. Rao
Harsha Honnappa
spellingShingle Imon Banerjee
Vinayak A. Rao
Harsha Honnappa
PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
Entropy
ergodicity
Markov chain
probably approximately correct
variational Bayes
author_facet Imon Banerjee
Vinayak A. Rao
Harsha Honnappa
author_sort Imon Banerjee
title PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
title_short PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
title_full PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
title_fullStr PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
title_full_unstemmed PAC-Bayes Bounds on Variational Tempered Posteriors for Markov Models
title_sort pac-bayes bounds on variational tempered posteriors for markov models
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2021-03-01
description Datasets displaying temporal dependencies abound in science and engineering applications, with Markov models representing a simplified and popular view of the temporal dependence structure. In this paper, we consider Bayesian settings that place prior distributions over the parameters of the transition kernel of a Markov model, and seek to characterize the resulting, typically intractable, posterior distributions. We present a Probably Approximately Correct (PAC)-Bayesian analysis of variational Bayes (VB) approximations to tempered Bayesian posterior distributions, bounding the model risk of the VB approximations. Tempered posteriors are known to be robust to model misspecification, and their variational approximations do not suffer the usual problems of over confident approximations. Our results tie the risk bounds to the mixing and ergodic properties of the Markov data generating model. We illustrate the PAC-Bayes bounds through a number of example Markov models, and also consider the situation where the Markov model is misspecified.
topic ergodicity
Markov chain
probably approximately correct
variational Bayes
url https://www.mdpi.com/1099-4300/23/3/313
work_keys_str_mv AT imonbanerjee pacbayesboundsonvariationaltemperedposteriorsformarkovmodels
AT vinayakarao pacbayesboundsonvariationaltemperedposteriorsformarkovmodels
AT harshahonnappa pacbayesboundsonvariationaltemperedposteriorsformarkovmodels
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