词嵌入模型及其在阿拉伯语应用中的比较研究

Dima Suleiman, A. Awajan
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引用次数: 20

摘要

词嵌入是使用向量表示文本,这样具有相似语法和语义的词将具有相似的向量表示。对于大多数自然语言处理应用来说,使用向量表示单词是非常关键的。在自然语言中,当使用神经网络进行处理时,将单词向量作为输入馈送到网络中。本文对Glove和word2vec模型中的CBOW和Skip-gram两种方法进行了比较研究。此外,本研究还综述了目前在阿拉伯语应用中使用词嵌入的研究现状,如情感分析、语义相似度、简答评分、信息检索、释义识别、抄袭检测和文本蕴涵等。
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Comparative Study of Word Embeddings Models and Their Usage in Arabic Language Applications
Word embeddings is the representation of the text using vectors such that the words that have similar syntax and semantic will have similar vector representation. Representing words using vectors is very crucial for most of natural language processing applications. In natural language, when using neural network for processing, the words vectors will be fed as input to the network. In this paper, a comparative study of several word embeddings models is conducted including Glove and the two approaches of word2vec model called CBOW and Skip-gram. Furthermore, this study surveying most of the state-of-art of using word embeddings in Arabic language applications such as sentiment analysis, semantic similarity, short answer grading, information retrieval, paraphrase identification, plagiarism detection and Textual Entailment.
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