Hinge-Loss Markov Random Fields and Probabilistic Soft Logic

dc.contributor.authorBach, Stephen H.en
dc.contributor.authorBroecheler, Matthiasen
dc.contributor.authorHuang, Berten
dc.contributor.authorGetoor, Liseen
dc.contributor.departmentComputer Scienceen
dc.date.accessioned2019-10-17T19:05:34Zen
dc.date.available2019-10-17T19:05:34Zen
dc.date.issued2017en
dc.description.abstractA fundamental challenge in developing high-impact machine learning technologies is balancing the need to model rich, structured domains with the ability to scale to big data. Many important problem areas are both richly structured and large scale, from social and biological networks, to knowledge graphs and the Web, to images, video, and natural language. In this paper, we introduce two new formalisms for modeling structured data, and show that they can both capture rich structure and scale to big data. The first, hinge-loss Markov random fields (HL-MRFs), is a new kind of probabilistic graphical model that generalizes different approaches to convex inference. We unite three approaches from the randomized algorithms, probabilistic graphical models, and fuzzy logic communities, showing that all three lead to the same inference objective. We then de fine HL-MRFs by generalizing this uni ed objective. The second new formalism, probabilistic soft logic (PSL), is a probabilistic programming language that makes HL-MRFs easy to de fine using a syntax based on fi rst-order logic. We introduce an algorithm for inferring most-probable variable assignments (MAP inference) that is much more scalable than general-purpose convex optimization methods, because it uses message passing to take advantage of sparse dependency structures. We then show how to learn the parameters of HL-MRFs. The learned HL-MRFs are as accurate as analogous discrete models, but much more scalable. Together, these algorithms enable HL-MRFs and PSL to model rich, structured data at scales not previously possible.en
dc.identifier.urihttp://hdl.handle.net/10919/94622en
dc.identifier.volume18en
dc.language.isoen_USen
dc.publisherMIT Pressen
dc.rightsCreative Commons Attribution 3.0 United Statesen
dc.rights.urihttp://creativecommons.org/licenses/by/3.0/us/en
dc.subjectProbabilistic graphical modelsen
dc.subjectstatistical relational learningen
dc.subjectstructured predictionen
dc.titleHinge-Loss Markov Random Fields and Probabilistic Soft Logicen
dc.title.serialJournal of Machine Learning Researchen
dc.typeArticle - Refereeden

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