Submitted by mjarvisa on October 31, 2011 - 11:00
Lecturer :
Teppo Niinimäki
Event type:
HIIT seminar
Event time:
2011-11-25 10:15 to 11:00
Place:
Kumpula Exactum B222
Description:
SPEAKER: Teppo Niinimäki University of Helsinki, HIIT TITLE: Partial Order MCMC for Structure Discovery in Bayesian Networks ABSTRACT: Learning the structure of a Bayesian network from given data is an extensively studied problem. We present a new Markov chain Monte Carlo method for estimating posterior probabilities of structural features in Bayesian networks. The method draws samples from the posterior distribution of partial orders on the nodes; for each sampled partial order, the conditional probabilities of interest are computed exactly. We give both analytical and empirical results that suggest the superiority of the new method compared to previous methods, which sample either directed acyclic graphs or linear orders on the nodes.
Joint work with Pekka Parviainen and Mikko Koivisto.
Last updated on 2 Nov 2011 by Matti Järvisalo - Page created on 31 Oct 2011 by Matti Järvisalo