创建塞尔维亚语停止词词典

U. Marovac, A. Avdić, A. Ljajić
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引用次数: 1

摘要

利用自然语言处理技术,通过映射文档关键词或基于内容的文档分类等方式,从文档主题提取中获得大量信息。为了获得这些信息,重要的一步是将句子中具有信息价值的单词与不影响其含义的单词分开。通过使用特定于每种自然语言的停止词字典,可以实现对句子中没有意义的词的标记。本文介绍了在塞尔维亚语中创建一个停顿词词典。在三种不同的数据集上分析了停用词对文本处理的影响。结果表明,采用本文提出的塞尔维亚语停止词词典,数据集维数从15%降低到39%,同时得到的n-gram语言模型的质量得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creating a stop word dictionary in Serbian
By using natural language processing techniques, it is possible to get a lot of information from the extraction of document topics through mapping of document key words or content-based classification of documents, etc. To get this information, an important step is to separate words that carries informative value in a sentence from those words that do not affect its meaning. By using dictionaries of stop words specific to each natural language, the marking of words that do not carry meaning in the sentence is achieved. This paper presents creating a stop word dictionary in Serbian. The influence of stop words to the text processing is presented on three different data set. It is shown that by using proposed dictionary of Serbian stop words the data set dimension is reduced from 15% to 39%, while the quality of the obtained n-gram language models is improved.
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