Adaptive Proposal Distribution for Random Walk Metropolis Algorithm

Posted: 16 Nov 1999

See all articles by Heikki Haario

Heikki Haario

University of Helsinki - Department of Mathematics

Eero Saksman

University of Helsinki - Department of Mathematics

Johanna Tamminen

Government of the Republic of Finland - Finnish Meteorological Institute

Abstract

The choice of a suitable MCMC method and further the choice of a proposal distribution is known to be crucial for the convergence of the Markov chain. However, in many cases the choice of an effective proposal distribution is difficult. As a remedy we suggest a method called Adaptive Proposal (AP). Although the stationary distribution of the AP algorithm is slightly biased, it appears to provide an efficient tool for, e.g., reasonably low dimensional problems, as typically encountered in non-linear regression problems in natural sciences. As a realistic example we include a successful application of the AP algorithm in parameter estimation for the satellite instrument `GOMOS'. In this paper we also present systematic performance criteria for comparing Adaptive Proposal algorithm with more traditional Metropolis algorithms.

JEL Classification: C15

Suggested Citation

Haario, Heikki and Saksman, Eero and Tamminen, Johanna, Adaptive Proposal Distribution for Random Walk Metropolis Algorithm. Available at SSRN: https://ssrn.com/abstract=185111

Heikki Haario (Contact Author)

University of Helsinki - Department of Mathematics ( email )

P.O. Box 4
Yliopistonkatu 5
FIN-00014 Helsinki
Finland
+358-9-191 22871 (Phone)

Eero Saksman

University of Helsinki - Department of Mathematics ( email )

P.O. Box 4
Yliopistonkatu 5
FIN-00014 Helsinki
Finland
+358-9-191 22872 (Phone)

Johanna Tamminen

Government of the Republic of Finland - Finnish Meteorological Institute ( email )

P.O.Box 503
Geophysical Research Division
FIN-00101 Helsinki
Finland

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