基于加权词汇特征的精确词义消歧系统

A. Rezapour, S. M. Fakhrahmad, M. Sadreddini, M. Z. Jahromi
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引用次数: 4

摘要

词义消歧(WSD)是机器翻译过程中面临的主要挑战之一,它被定义为在文本中选择多义词的正确含义。通常使用监督学习方法来解决这个问题。消歧任务使用翻译文档(作为训练数据)的统计数据或源语言和目标语言的双重语料库来执行。在本文中,我们提出了一种基于k近邻算法的WSD监督学习方法。作为第一步,我们提取了两组特征:在文本中频繁出现的词集和围绕歧义词的词集。为了提高分类精度,我们先进行特征选择,然后提出特征加权策略来调整分类器。为了证明所提出的模式不依赖于语言,我们将所提出的模式应用于两组数据,即英语和波斯语语料库。评价结果表明,特征选择和特征加权策略对分类系统的准确率有显著影响。与最先进的技术相比,这一结果也令人鼓舞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An accurate word sense disambiguation system based on weighted lexical features
One of the major challenges in the process of machine translation is word sense disambiguation (WSD), which is defined as choosing the correct meaning of a multi-meaning word in a text. Supervised learning methods are usually used to solve this problem. The disambiguation task is performed using the statistics of the translated documents (as training data) or dual corpora of source and target languages. In this article, we present a supervised learning method for WSD, which is based on K-nearest neighbor algorithm. As the first step, we extract two sets of features: the set of words that have occurred frequently in the text and the set of words surrounding the ambiguous word. In order to improve the classification accuracy, we perform a feature selection process and then propose a feature weighting strategy to tune the classifier. In order to show that the proposed schemes are not language dependent, we apply the suggested schemes to two sets of data, i.e. English and Persian corpora. The evaluation results show that the feature selection and feature weighting strategies have a significant effect on the accuracy of the classification system. The results are also encouraging compared with the state of the art.
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