A Hybrid Approach to Vietnamese Word Segmentation Using Part of Speech Tags

Dang Duc Pham, G. Tran, S. Pham
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引用次数: 45

Abstract

Word segmentation is one of the most important tasks in NLP. This task, within Vietnamese language and its own features, faces some challenges, especially in words boundary determination. To tackle the task of Vietnamese word segmentation, in this paper, we propose the WS4VN system that uses a new approach based on Maximum matching algorithm combining with stochastic models using part-of-speech information. The approach can resolve word ambiguity and choose the best segmentation for each input sentence. Our system gives a promising result with an F-measure of 97%, higher than the results of existing publicly available Vietnamese word segmentation systems.
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一种基于词性标签的越南语分词混合方法
分词是自然语言处理的重要任务之一。由于越南语本身的特点,这一任务面临着一些挑战,特别是在词语边界的确定上。为了解决越南语分词问题,本文提出了一种基于最大匹配算法和基于词性信息的随机模型相结合的WS4VN系统。该方法可以解决单词歧义,并为每个输入句子选择最佳分词。我们的系统给出了一个有希望的结果,f值为97%,高于现有的公开可用的越南语分词系统的结果。
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