Identity Uncertainty and Citation Matching

Identity Uncertainty and Citation Matching

Hanna Pasula
Bhaskara Marthi
Brian Milch
Stuart Russell
Ilya Shpitser

Abstract: Identity uncertainty is a pervasive problem in real-world data analysis. It arises whenever objects are not labeled with unique identifiers or when those identifiers may not be perceived perfectly. In such cases, two observations may or may not correspond to the same object. In this paper, we consider the problem in the context of citation matching -- the problem of deciding which citations correspond to the same publication. Our approach is based on the use of a relational probability model to define a generative model for the domain, including models of author and title corruption and a probabilistic citation grammar. Identity uncertainty is handled by extending standard models to incorporate probabilities over the possible mappings between terms in the language and objects in the domain. Inference is based on Markov chain Monte Carlo, augmented with specific methods for generating efficient proposals when the domain contains many objects. Results on several citation data sets show that the method outperforms current algorithms for citation matching. The declarative, relational nature of the model also means that our algorithm can determine object characteristics such as author names by combining multiple citations of multiple papers.

Appeared in: Advances in Neural Information Processing 15 (NIPS 2002). Cambridge, MA: MIT Press, 2003

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Hanna Pasula
Last modified: Mon Aug 16 18:52:10 EDT 2004