Entity matching across heterogeneous data sources: An approach based on constrained cascade generalization

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摘要

To integrate or link the data stored in heterogeneous data sources, a critical problem is entity matching, i.e., matching records representing semantically corresponding entities in the real world, across the sources. While decision tree techniques have been used to learn entity matching rules, most decision tree learners have an inherent representational bias, that is, they generate univariate trees and restrict the decision boundaries to be axis-orthogonal hyper-planes in the feature space. Cascading other classification methods with decision tree learners can alleviate this bias and potentially increase classification accuracy. In this paper, the authors apply a recently-developed constrained cascade generalization method in entity matching and report on empirical evaluation using real-world data. The evaluation results show that this method outperforms the base classification methods in terms of classification accuracy, especially in the dirtiest case.

论文关键词:Heterogeneous databases,Entity matching,Record linkage,Decision tree,Cascade generalization

论文评审过程:Received 10 March 2008, Revised 18 April 2008, Accepted 22 April 2008, Available online 4 May 2008.

论文官网地址:https://doi.org/10.1016/j.datak.2008.04.007