从原始语料库中获取韩语词汇条目

WonHee Yu, Kinam Park, Soonyoung Jung, Heuiseok Lim
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引用次数: 0

摘要

本文提出了一种基于心理词汇表征模型的计算词汇条目习得模型。该模型像人类一样通过无监督学习从原始语料库中获取词汇条目。该模型由全形模块和语素获取模块组成。在full-from采集模块中,根据频率阈值和最近阈值自动获取核心full-form。在语素获取模块中,选择重复出现的不同全形式的子串作为候选语素。然后,通过使用字符串中音节的熵度量来证实候选语素。对1600万个全形式的韩语语料库进行实验,结果表明,该模型依次获得主要全形式和语素,准确率分别达到100%和99.04%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acquiring Korean Lexical Entry from a Raw Corpus
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. The model is composed of full-form and morpheme acquisition modules. In the full-from 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. The experimental results with a Korean corpus of which size is about 16 million full-forms show that the model successively acquires major full-forms and morphemes with the precision of 100% and 99.04%, respectively.
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