用潜在语义分析模型测量阿拉伯语词汇相似度的词干提取与轻词干提取

H. Froud, Abdelmonaime Lachkar, S. A. Ouatik
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引用次数: 16

摘要

任何阿拉伯语文本挖掘应用程序都需要表示单词中包含的语义信息。更准确地说,目的是更好地考虑词之间的语义依赖关系,这些词的共现频率表示这些词。有很多基于上下文分布来计算词之间相似度的建议。在本文中,我们比较和对比了应用于阿拉伯语料库的两种预处理技术的效果:词干和轻词干技术,用于测量阿拉伯词之间的语义,使用众所周知的抽象模型-潜在语义分析(LSA)-使用各种距离函数和相似度量,如欧氏距离,余弦相似度,Jaccard系数和Pearson相关系数。结果表明:一方面,语料库的多样性产生了更准确的结果;另一方面,由于词干会影响单词的含义,因此轻词干方法优于词干方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stemming versus Light Stemming for measuring the simitilarity between Arabic Words with Latent Semantic Analysis model
Representation of semantic information contained in the words is needed for any Arabic Text Mining applications. More precisely, the purpose is to better take into account the semantic dependencies between words expressed by the co-occurrence frequencies of these words. There have been many proposals to compute similarities between words based on their distributions in contexts. In this paper, we compare and contrast the effect of two preprocessing techniques applied to Arabic corpus: Stemming, and Light Stemming techniques for measuring the semantic between Arabic words with the well known abstractive model -Latent Semantic Analysis (LSA)- with a wide variety of distance functions and similarity measures, such as the Euclidean Distance, Cosine Similarity, Jaccard Coefficient, and the Pearson Correlation Coefficient. The obtained results show that, on the one hand, the variety of the corpus produces more accurate results; on the other hand, the Light Stemming outperformed the Stemming approach because Stemming affects the words meanings.
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