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Efficient Recursions for General Factorisable Models

Authors :
Reeves, Robert
Pettitt, Tony
Reeves, Robert
Pettitt, Tony
Source :
Biometrika
Publication Year :
2004

Abstract

Let n S-valued categorical variables be jointly distributed according to a distribution known only up to an unknown normalising constant. For an unnormalised joint likelihood expressible as a product of factors, we give an algebraic recursion which can be used for computing the normalising constant and other summations. A saving in computation is achieved when each factor contains a lagged subset of the components combining in the joint distribution, with maximum computational efficiency as the subsets attain their minimum size. If each subset contains at most r+1 of the n components in the joint distribution, we term this a lag-r model, whose normalising constant can be computed using a forward recursion in O(Sr+1) computations, as opposed to O(Sn) for the direct computation. We show how a lag-r model represents a Markov random field and allows a neighbourhood structure to be related to the unnormalised joint likelihood. We illustrate the method by showing how the normalising constant of the Ising or autologistic model can be computed.

Details

Database :
OAIster
Journal :
Biometrika
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn752560987
Document Type :
Electronic Resource