Dynamic constraints for record matching

Wenfei Fan, Hong Gao, Xibei Jia, Jianzhong Li, Shuai Ma

Research output: Contribution to journalArticlepeer-review

Abstract / Description of output

This paper investigates constraints for matching records from unreliable data sources. (a) We introduce a class of matching dependencies (mds) for specifying the semantics of unreliable data. As opposed to static constraints for schema design, mds are developed for record matching, and are defined in terms of similarity predicates and a dynamic semantics. (b) We identify a special case of mds, referred to as relative candidate keys (rcks), to determine what attributes to compare and how to compare them when matching records across possibly different relations. (c) We propose a mechanism for inferring mds, a departure from traditional implication analysis, such that when we cannot match records by comparing attributes that contain errors, we may still find matches by using other, more reliable attributes. Moreover, we develop a sound and complete system for inferring mds. (d) We provide a quadratic-time algorithm for inferring mds and an effective algorithm for deducing a set of high-quality rcks from mds. (e) We experimentally verify that the algorithms help matching tools efficiently identify keys at compile time for matching, blocking or windowing and in addition, that the md-based techniques effectively improve the quality and efficiency of various record matching methods.
Original languageEnglish
Pages (from-to)495-520
Number of pages26
JournalVLDB Journal
Issue number4
Publication statusPublished - 2011


Dive into the research topics of 'Dynamic constraints for record matching'. Together they form a unique fingerprint.

Cite this