Approximate Lifted Inference with Probabilistic Databases

2 Dec 2014Wolfgang GatterbauerDan Suciu

This paper proposes a new approach for approximate evaluation of #P-hard queries with probabilistic databases. In our approach, every query is evaluated entirely in the database engine by evaluating a fixed number of query plans, each providing an upper bound on the true probability, then taking their minimum... (read more)

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