Serguei V.S. Pakhomov
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Serguei V.S. Pakhomov is a person.
- See: Supervised WSD.
References
2007
- (Pedersen et al., 2007) ⇒ Ted Pedersen, Serguei V.S. Pakhomov, Siddharth Patwardhan, and Christopher G. Chute. (2007). “Measures of Semantic Similarity and Relatedness in the Biomedical Domain.” In: Journal of Biomedical Informatics, 2007
2006
- (Joshi et al., 2006) ⇒ Mahesh Joshi, Serguei V.S. Pakhomov, Ted Pedersen, Richard Maclin, and Christopher Chute. (2006). “An End-to-end Supervised Target-Word Sense Disambiguation System.” In: Proceedings of AAAI-2006 (Intelligent System Demonstration).
2002
- (Pakhomov, 2002) ⇒ Serguei V.S. Pakhomov. (2002). “Semi-Supervised Maximum Entropy Based Approach to Acronym and Abbreviation Normalization in Medical Texts.” In: Proceedings of 40th Annual Meeting of ACL, (ACL 2002) doi:10.3115/1073083.1073111
- ABSTRACT: Text normalization is an important aspect of successful information retrieval from medical documents such as clinical notes, radiology reports and discharge summaries. In the medical domain, a significant part of the general problem of text normalization is abbreviation and acronym disambiguation. Numerous abbreviations are used routinely throughout such texts and knowing their meaning is critical to data retrieval from the document. In this paper I will demonstrate a method of automatically generating training data for Maximum Entropy (ME) modeling of abbreviations and acronyms and will show that using ME modeling is a promising technique for abbreviation and acronym normalization. I report on the results of an experiment involving training a number of ME models used to normalize abbreviations and acronyms on a sample of 10,000 rheumatology notes with ~89% accuracy.
1999
- (Pakhomov, 1999) ⇒ Serguei V.S. Pakhomov. (1999). “Modeling Filled Pauses in Medical Dictations.” In: Proceedings of the 37th Annual Meeting of the association for computational linguistics. College Park, MD; 1999. p. 619–24.