Title
Paired-Dual Learning for Fast Training of Latent Variable Hinge-Loss MRFs
Abstract
Latent variables allow probabilistic graphical models to capture nuance and structure in important domains such as network science, natural language processing, and computer vision. Naive approaches to learning such complex models can be prohibitively expensive--because they require repeated inferences to update beliefs about latent variables--so lifting this restriction for useful classes of models is an important problem. Hinge-loss Markov random fields (HL-MRFs) are graphical models that allow highly scalable inference and learning in structured domains, in part by representing structured problems with continuous variables. However, this representation leads to challenges when learning with latent variables. We introduce paired-dual learning, a framework that greatly speeds up training by using tractable entropy surrogates and avoiding repeated inferences. Paired-dual learning optimizes an objective with a pair of dual inference problems. This allows fast, joint optimization of parameters and dual variables. We evaluate on social-group detection, trust prediction in social networks, and image reconstruction, finding that paired-dual learning trains models as accurate as those trained by traditional methods in much less time, often before traditional methods make even a single parameter update.
Year
Venue
Field
2015
International Conference on Machine Learning
Network science,Random field,Hinge loss,Pattern recognition,Inference,Computer science,Markov chain,Latent variable,Artificial intelligence,Graphical model,Machine learning,Scalability
DocType
Citations 
PageRank 
Conference
3
0.41
References 
Authors
26
4
Name
Order
Citations
PageRank
Stephen H. Bach1665.70
Bert Huang256339.09
Jordan Boyd-Graber3142084.60
Lise Getoor44365320.21