On the Dirichlet Prior and Bayesian Regularization


Autoria(s): Steck, Harald; Jaakkola, Tommi S.
Data(s)

08/10/2004

08/10/2004

01/09/2002

Resumo

A common objective in learning a model from data is to recover its network structure, while the model parameters are of minor interest. For example, we may wish to recover regulatory networks from high-throughput data sources. In this paper we examine how Bayesian regularization using a Dirichlet prior over the model parameters affects the learned model structure in a domain with discrete variables. Surprisingly, a weak prior in the sense of smaller equivalent sample size leads to a strong regularization of the model structure (sparse graph) given a sufficiently large data set. In particular, the empty graph is obtained in the limit of a vanishing strength of prior belief. This is diametrically opposite to what one may expect in this limit, namely the complete graph from an (unregularized) maximum likelihood estimate. Since the prior affects the parameters as expected, the prior strength balances a "trade-off" between regularizing the parameters or the structure of the model. We demonstrate the benefits of optimizing this trade-off in the sense of predictive accuracy.

Formato

11 p.

3152389 bytes

1414851 bytes

application/postscript

application/pdf

Identificador

AIM-2002-014

http://hdl.handle.net/1721.1/6702

Idioma(s)

en_US

Relação

AIM-2002-014

Palavras-Chave #AI #Regularization #Dirichlet Prior