Machine Learning in Terminology Extraction from Czech and English Texts

Dominika Kováríková
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引用次数: 1

Abstract

Abstract The method of automatic term recognition based on machine learning is focused primarily on the most important quantitative term attributes. It is able to successfully identify terms and non-terms (with success rate of more than 95 %) and find characteristic features of a term as a terminological unit. A single-word term can be characterized as a word with a low frequency that occurs considerably more often in specialized texts than in non-academic texts, occurs in a small number of disciplines, its distribution in the corpus is uneven as is the distance between its two instances. A multi-word term is a collocation consisting of words with low frequency and contains at least one single-word term. The method is based on quantitative features and it makes it possible to utilize the algorithms in multiple disciplines as well as to create cross-lingual applications (verified on Czech and English).
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机器学习在捷克语和英语文本术语抽取中的应用
摘要基于机器学习的术语自动识别方法主要关注最重要的定量术语属性。它能够成功地识别术语和非术语(成功率超过95%),并找到术语的特征作为术语单位。一个单字术语可以被描述为一个频率较低的词,在专业文本中比在非学术文本中出现的频率要高得多,出现在少数学科中,它在语料库中的分布是不均匀的,它的两个实例之间的距离也是不均匀的。多词词是由频率较低的词组成的搭配,并且至少包含一个单词词。该方法基于定量特征,使得在多个学科中使用算法以及创建跨语言应用程序(在捷克语和英语上进行验证)成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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