LINQS

STATISTICAL RELATIONAL LEARNING GROUP @ UMD



 

Hinge-loss Markov Random Fields: Convex Inference for Structured Prediction

Uncertainty in Artificial Intelligence - 2013
Download the publication : bach-uai13.pdf [388Ko]  
Graphical models for structured domains are powerful tools, but the computational complexities of combinatorial prediction spaces can force restrictions on models, or require approximate inference in order to be tractable. Instead of working in a combinatorial space, we use hinge-loss Markov random fields (HL-MRFs), an expressive class of graphical models with log-concave density functions over continuous variables, which can represent confidences in discrete predictions. This paper demonstrates that HL-MRFs are general tools for fast and accurate structured prediction. We introduce the first inference algorithm that is both scalable and applicable to the full class of HL-MRFs, and show how to train HL-MRFs with several learning algorithms. Our experiments show that HL-MRFs match or surpass the predictive performance of state-of-the-art methods, including discrete models, in four application domains.

BibTex references

@InProceedings{bach:uai13,
  author       = "Bach, Stephen H. and Huang, Bert and London, Ben and Getoor, Lise",
  title        = "Hinge-loss Markov Random Fields: Convex Inference for Structured Prediction",
  booktitle    = "Uncertainty in Artificial Intelligence",
  year         = "2013",
}

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