Statistical Relational Learning With Soft Quantifiers

INDUCTIVE LOGIC PROGRAMMING, ILP 2015(2015)

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摘要
Quantification in statistical relational learning (SRL) is either existential or universal, however humans might be more inclined to express knowledge using soft quantifiers, such as "most" and "a few". In this paper, we define the syntax and semantics of PSL Q, a new SRL framework that supports reasoning with soft quantifiers, and present its most probable explanation (MPE) inference algorithm. To the best of our knowledge, PSL Q is the first SRL framework that combines soft quantifiers with first-order logic rules for modeling uncertain relational data. Our experimental results for link prediction in social trust networks demonstrate that the use of soft quantifiers not only allows for a natural and intuitive formulation of domain knowledge, but also improves the accuracy of inferred results.
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关键词
soft quantifiers,relational,learning
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