DocumentCode
28673
Title
Learning Graphical Model Parameters with Approximate Marginal Inference
Author
Domke, Jens
Author_Institution
NICTA, Australia Nat. Univ., Canberra, ACT, Australia
Volume
35
Issue
10
fYear
2013
fDate
Oct. 2013
Firstpage
2454
Lastpage
2467
Abstract
Likelihood-based learning of graphical models faces challenges of computational complexity and robustness to model misspecification. This paper studies methods that fit parameters directly to maximize a measure of the accuracy of predicted marginals, taking into account both model and inference approximations at training time. Experiments on imaging problems suggest marginalization-based learning performs better than likelihood-based approximations on difficult problems where the model being fit is approximate in nature.
Keywords
approximation theory; computational complexity; inference mechanisms; learning (artificial intelligence); solid modelling; approximate marginal inference; computational complexity; graphical model parameter learning; inference approximations; likelihood-based approximations; likelihood-based learning; marginalization-based learning; model misspecification; Approximation algorithms; Entropy; Function approximation; Markov processes; Optimization; Vectors; Graphical models; conditional random fields; inference; machine learning; segmentation; Algorithms; Artificial Intelligence; Computer Simulation; Models, Statistical; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity; Subtraction Technique;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2013.31
Filename
6420841
Link To Document