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Enabling Quality Control for Entity Resolution: A Human and Machine Cooperation Framework (1710.00204v2)

Published 30 Sep 2017 in cs.DB

Abstract: Even though many machine algorithms have been proposed for entity resolution, it remains very challenging to find a solution with quality guarantees. In this paper, we propose a novel HUman and Machine cOoperation (HUMO) framework for entity resolution (ER), which divides an ER workload between the machine and the human. HUMO enables a mechanism for quality control that can flexibly enforce both precision and recall levels. We introduce the optimization problem of HUMO, minimizing human cost given a quality requirement, and then present three optimization approaches: a conservative baseline one purely based on the monotonicity assumption of precision, a more aggressive one based on sampling and a hybrid one that can take advantage of the strengths of both previous approaches. Finally, we demonstrate by extensive experiments on real and synthetic datasets that HUMO can achieve high-quality results with reasonable return on investment (ROI) in terms of human cost, and it performs considerably better than the state-of-the-art alternatives in quality control.

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Authors (9)
  1. Zhaoqiang Chen (7 papers)
  2. Qun Chen (28 papers)
  3. Fengfeng Fan (1 paper)
  4. Yanyan Wang (18 papers)
  5. Zhuo Wang (54 papers)
  6. Youcef Nafa (5 papers)
  7. Zhanhuai Li (9 papers)
  8. Hailong Liu (41 papers)
  9. Wei Pan (149 papers)

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