Principled Graph Matching Algorithms for Integrating Multiple Data Sources

3 Feb 2014Duo ZhangBenjamin I. P. RubinsteinJim Gemmell

This paper explores combinatorial optimization for problems of max-weight graph matching on multi-partite graphs, which arise in integrating multiple data sources. Entity resolution-the data integration problem of performing noisy joins on structured data-typically proceeds by first hashing each record into zero or more blocks, scoring pairs of records that are co-blocked for similarity, and then matching pairs of sufficient similarity... (read more)

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