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Unsupervised Lexical Entry Acquisition Model based on Representation of Human Mental Lexicon

Authors
Yu, WonheePark, Doo-SoonSuh, TaeweonLim, Heuiseok
Issue Date
Jul-2011
Publisher
INT INFORMATION INST
Keywords
Mental Lexicon; Lexical Acquisition; Language Learning; Machine Readable Dictionary
Citation
INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL, v.14, no.7, pp.2229 - 2241
Indexed
SCIE
SCOPUS
Journal Title
INFORMATION-AN INTERNATIONAL INTERDISCIPLINARY JOURNAL
Volume
14
Number
7
Start Page
2229
End Page
2241
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/112076
ISSN
1343-4500
Abstract
This paper proposes a computational lexical entry acquisition model based on a representation model of the mental lexicon. The proposed model acquires lexical entries from a raw corpus by unsupervised learning, like human beings. The model is composed of full-form and morpheme acquisition modules. In the full-form acquisition module, core full-forms are automatically acquired according to the frequency and recency thresholds. In the morpheme acquisition module, a repeatedly occurring substring in different full-forms is chosen as a candidate morpheme. Then, the candidate is corroborated as a morpheme by using the entropy measure of syllables in the string. We tested the model with a Korean language raw corpus as large as about 16 million Korean full-forms. The test results show that the model successively acquires major Korean language full-forms and morphemes, with an average precision of 100% and 99.04%, respectively. In addition, we observed a vocabulary spurt during learning, which is a phenomenon peculiar to children's language learning process.
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