Evaluation of entity resolution approaches on real-world match problems

@article{Kpcke2010EvaluationOE,
  title={Evaluation of entity resolution approaches on real-world match problems},
  author={Hanna K{\"o}pcke and Andreas Thor and Erhard Rahm},
  journal={PVLDB},
  year={2010},
  volume={3},
  pages={484-493}
}
Despite the huge amount of recent research efforts on entity resolution (matching) there has not yet been a comparative evaluation on the relative effectiveness and efficiency of alternate approaches. We therefore present such an evaluation of existing implementations on challenging real-world match tasks. We consider approaches both with and without using machine learning to find suitable parameterization and combination of similarity functions. In addition to approaches from the research… CONTINUE READING

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