Corpus ID: 2998057

Probabilistic Similarity Logic

  title={Probabilistic Similarity Logic},
  author={Matthias Broecheler and Lilyana Mihalkova and L. Getoor},
  • Matthias Broecheler, Lilyana Mihalkova, L. Getoor
  • Published in UAI 2010
  • Computer Science, Mathematics
  • Many machine learning applications require the ability to learn from and reason about noisy multi-relational data. To address this, several effective representations have been developed that provide both a language for expressing the structural regularities of a domain, and principled support for probabilistic inference. In addition to these two aspects, however, many applications also involve a third aspect-the need to reason about similarities-which has not been directly supported in existing… CONTINUE READING
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