Focused Belief Propagation for Query-Specific Inference

Anton Chechetka, Carlos Guestrin ; JMLR W&CP 9:89-96, 2010.

Abstract

With the increasing popularity of large-scale probabilistic graphical models, even "lightweight" approximate inference methods are becoming infeasible. Fortunately, often large parts of the model are of no immediate interest to the end user. Given the variable that the user actually cares about, we show how to quantify edge importance in graphical models and to significantly speed up inference by focusing computation on important parts of the model. Our algorithm empirically demonstrates convergence speedup by multiple times over state of the art



Home Page

Papers

Submissions

News

Scope

Editorial Board

Announcements

Proceedings

Open Source Software

Search

Login



RSS Feed

Page last modified on Wed Mar 24 15:36 GMT 2010.

Copyright @ JMLR 2000. All rights reserved.