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Combining machine learning and human judgment in author disambiguation

Published: 24 October 2011 Publication History

Abstract

Author disambiguation in digital libraries becomes increasingly difficult as the number of publications and consequently the number of ambiguous author names keep growing. The fully automatic author disambiguation approach could not give satisfactory results due to the lack of signals in many cases. Furthermore, human judgment on the basis of automatic algorithms is also not suitable because the automatically disambiguated results are often mixed and not understandable for humans. In this paper, we propose a Labeling Oriented Author Disambiguation approach, called LOAD, to combine machine learning and human judgment together in author disambiguation. LOAD exploits a framework which consists of high precision clustering, high recall clustering, and top dissimilar clusters selection and ranking. In the framework, supervised learning algorithms are used to train the similarity functions between publications and a clustering algorithm is further applied to generate clusters. To validate the effectiveness and efficiency of the proposed LOAD approach, comprehensive experiments are conducted. Comparing to conventional author disambiguation algorithms, the LOAD yields much more accurate results to assist human labeling. Further experiments show that the LOAD approach can save labeling time dramatically.

References

[1]
M. Bilenko, R. J. Mooney, W. W. Cohen, P. D. Ravikumar, and S. E. Fienberg. Adaptive name matching in information integration. IEEE Intelligent Systems, 18(5):16--23, 2003.
[2]
O. Byung-won, D. Lee, J. Kang, and P. Mitra. Comparative study of name disambiguation problem using a scalable blocking-based framework. In ACM/IEEE Joint Conference on Digital Libraries, pages 344--353, 2005.
[3]
X. Fan, J. Wang, L. Bing, L. Zhou, and W. Hu. Ghost: an effective graph-based framework for name distinction. In International Conference on Information and Knowledge Management, pages 1449--1450, 2008.
[4]
H. Han, H. Zha, and C. L. Giles. A model-based k-means algorithm for name disambiguation. In International Semantic Web Conference, 2003.
[5]
H. Han, H. Zha, and C. L. Giles. Name disambiguation in author citations using a k-way spectral clustering method. In ACM/IEEE Joint Conference on Digital Libraries, pages 334--343, 2005.
[6]
H. Han, H. Zha, C. Li, K. Tsioutsiouliklis, and C. L. GILES. Two supervised learning approaches for name disambiguation in author citations. In ACM/IEEE Joint Conference on Digital Libraries, pages 296--305, 2004.
[7]
J. Huang, S. Ertekin, and C. L. Giles. Efficient name disambiguation for large-scale databases. In Proceedings of the 10th European Conference on Principles and Practice of Knowledge Discovery in Databases, pages 536--544, 2006.
[8]
Y. Song, J. Huang, I. G. Councill, J. Li, and C. L. Giles. Generative models for name disambiguation. In World Wide Web Conference Series, pages 1163--1164, 2007.
[9]
Y. F. Tan, M. yen Kan, and D. Lee. Search engine driven author disambiguation. In ACM/IEEE Joint Conference on Digital Libraries, pages 314--315, 2006.
[10]
P. Treeratpituk and C. L. Giles. Disambiguating authors in academic publications using random forests. In ACM/IEEE Joint Conference on Digital Libraries, pages 39--48, 2009.
[11]
F. Wang, J. Li, J. Tang, J. Zhang, and K. Wang. Name disambiguation using atomic clusters. In Proceedings of the 9th International Conference on Web-Age Information Management, pages 357--364, 2008.

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cover image ACM Conferences
CIKM '11: Proceedings of the 20th ACM international conference on Information and knowledge management
October 2011
2712 pages
ISBN:9781450307178
DOI:10.1145/2063576
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Publication History

Published: 24 October 2011

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  1. author disambiguation
  2. human judgment
  3. user contribution

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