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ERBlox: Combining Matching Dependencies with Machine Learning for Entity Resolution (1508.06013v1)

Published 25 Aug 2015 in cs.DB, cs.AI, and cs.LG

Abstract: Entity resolution (ER), an important and common data cleaning problem, is about detecting data duplicate representations for the same external entities, and merging them into single representations. Relatively recently, declarative rules called matching dependencies (MDs) have been proposed for specifying similarity conditions under which attribute values in database records are merged. In this work we show the process and the benefits of integrating three components of ER: (a) Classifiers for duplicate/non-duplicate record pairs built using ML techniques, (b) MDs for supporting both the blocking phase of ML and the merge itself; and (c) The use of the declarative language LogiQL -an extended form of Datalog supported by the LogicBlox platform- for data processing, and the specification and enforcement of MDs.

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Authors (3)
  1. Zeinab Bahmani (3 papers)
  2. Leopoldo Bertossi (57 papers)
  3. Nikolaos Vasiloglou (12 papers)
Citations (27)

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