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JOURNALS // Program Systems: Theory and Applications // Archive

Program Systems: Theory and Applications, 2018 Volume 9, Issue 4, Pages 3–33 (Mi ps306)

This article is cited in 4 papers

Artificial Intelligence, Intelligent Systems, Neural Networks

Disambiguation between eventive and non-eventive meaning of nouns

I. V. Trofimov, E. A. Suleymanova, N. A. Vlasova, A. V. Podobryaev

Ailamazyan Program Systems Institute of Russian Academy of Sciences

Abstract: Event extraction is an advanced form of text mining having numerous applications. One of the challenges faced by event extraction systems is the problem of automatic distinguishing between eventive and non-eventive use of ambiguous event nominals. The proposed disambiguation method relies on an automatically generated training set. In order to learn the difference between eventive and non-eventive reading of a target ambiguous nominal, the classifier is trained on two sets of automatically labelled examples featuring unambiguous distributionally similar lexical substitutes for either reading. The method was evaluated on a small sample of 6 ambiguous event-denoting nouns and performed fairly well (77,38% average accuracy, although with more than 20 individual nouns). Suggestions for future work include development of a more advanced distributional model and research towards automated selection of unambiguous substitutes.

Key words and phrases: word sense disambiguation, automatic training set generation, distributional semantic model, event, event nominal, event-related information extraction.

UDC: 004.89:004.912
BBK: 32.813

MSC: 68T50,91F20

Received: 27.07.2018
Accepted: 01.11.2018

DOI: 10.25209/2079-3316-2018-9-4-3-33



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