The most probable database problem (bibtex)

by Eric Gribkoff, Guy Van den Broeck and Dan Suciu
Abstract:
This paper proposes a novel inference task for probabilistic databases: the most probable database (MPD) problem. The MPD is the most probable deterministic database where a given query or constraint is true. We highlight two distinctive applications, in database repair of key and dependency constraints, and in finding most probable explanations in statistical relational learning. The MPD problem raises new theoretical questions, such as the possibility of a dichotomy theorem for MPD, classifying queries as being either PTIME or NP-hard. We show that such a dichotomy would diverge from dichotomies for other inference tasks. We then prove a dichotomy for queries that represent unary functional dependency constraints. Finally, we discuss symmetric probabilities and the opportunities for lifted inference.
Reference:
Eric Gribkoff, Guy Van den Broeck and Dan Suciu. The most probable database problem, In Proceedings of the First International Workshop on Big Uncertain Data (BUDA), 2014.
Bibtex Entry:
@inproceedings{GribkoffBUDA14,
  author = "Gribkoff, Eric and Van den Broeck, Guy and Suciu, Dan",
  title = "The most probable database problem",
  booktitle = "Proceedings of the First International Workshop on Big Uncertain Data (BUDA)",
  location="Snowbird, Utah, USA",
  month = Jun,
  year = "2014",
  url = "http://starai.cs.ucla.edu/papers/GribkoffBUDA14.pdf",
  keywords   = {workshop}
}
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