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Analysis of the grammatical functions between adnoun and noun phrases in Korean using Support Vector Machines

机译:支持向量机分析朝鲜语中名词与名词短语的语法功能

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摘要

This study aims to improve the performance of identifying grammatical functions between an adnoun clause and a noun phrase in Korean. The key task is to determine the relation between the two constituents in terms of such functional categories as subject, object, adverbial and appositive. The problem is mainly caused by the fact that functional morphemes, which are considered to be crucial for identifying the relation, are omitted in the noun phrases. To tackle this problem, we propose to employ the Support Vector Machines (SVM) in determining the grammatical functions. Through an experiment with a tagged corpus for training SVMs, we found the proposed model to be more useful than both the Maximum Entropy Model (MEM) and the backed-off model.
机译:这项研究旨在提高在韩语中副词和名词短语之间识别语法功能的性能。关键任务是根据主体,客体,状语和宾语等功能类别确定这两个成分之间的关​​系。问题主要是由于以下事实引起的:在名词短语中省略了对确定关系至关重要的功能词素。为了解决这个问题,我们建议采用支持向量机(SVM)来确定语法功能。通过带有标记语料库的训练SVM的实验,我们发现所提出的模型比最大熵模型(MEM)和支持模型更有用。

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