Journal article icon

Journal article

On the prior and posterior distributions used in graphical modelling

Abstract:
Graphical model learning and inference are often performed using Bayesian techniques. In particular, learning is usually performed in two separate steps. First, the graph structure is learned from the data; then the parameters of the model are estimated conditional on that graph structure. While the probability distributions involved in this second step have been studied in depth, the ones used in the first step have not been explored in as much detail. In this paper, we will study the prior and posterior distributions defined over the space of the graph structures for the purpose of learning the structure of a graphical model. In particular, we will provide a characterisation of the behaviour of those distributions as a function of the possible edges of the graph. We will then use the properties resulting from this characterisation to define measures of structural variability for both Bayesian and Markov networks, and we will point out some of their possible applications. © 2013 International Society for Bayesian Analysis.

Actions


Access Document


Publisher copy:
10.1214/13-BA819

Authors



Journal:
Bayesian Analysis More from this journal
Volume:
8
Issue:
3
Pages:
505-532
Publication date:
2013-01-01
DOI:
EISSN:
1931-6690
ISSN:
1936-0975


Language:
English
Keywords:
Pubs id:
pubs:487745
UUID:
uuid:b9d9262f-589f-4148-9de4-576615e9d816
Local pid:
pubs:487745
Source identifiers:
487745
Deposit date:
2014-11-11

Terms of use



Views and Downloads






If you are the owner of this record, you can report an update to it here: Report update to this record

TO TOP