Lifted graphical models: a survey

被引:0
|
作者
Angelika Kimmig
Lilyana Mihalkova
Lise Getoor
机构
[1] KU Leuven,Department of Computer Science
[2] Google,Computer Science Department
[3] University of California,undefined
来源
Machine Learning | 2015年 / 99卷
关键词
Statistical relational learning; First-order probabilistic models; Probabilistic programming; Par-factor graphs; Templated graphical models; Lifted inference and learning ;
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学科分类号
摘要
Lifted graphical models provide a language for expressing dependencies between different types of entities, their attributes, and their diverse relations, as well as techniques for probabilistic reasoning in such multi-relational domains. In this survey, we review a general form for a lifted graphical model, a par-factor graph, and show how a number of existing statistical relational representations map to this formalism. We discuss inference algorithms, including lifted inference algorithms, that efficiently compute the answers to probabilistic queries over such models. We also review work in learning lifted graphical models from data. There is a growing need for statistical relational models (whether they go by that name or another), as we are inundated with data which is a mix of structured and unstructured, with entities and relations extracted in a noisy manner from text, and with the need to reason effectively with this data. We hope that this synthesis of ideas from many different research groups will provide an accessible starting point for new researchers in this expanding field.
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页码:1 / 45
页数:44
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