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An efficient semantic recommender method for Arabic text

机译:一种有效的阿拉伯文本语义推荐方法

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Purpose This paper aims to propose a new efficient semantic recommender method for Arabic content. Design/methodology/approach Three semantic similarities were proposed to be integrated with the recommender system to improve its ability to recommend based on the semantic aspect. The proposed similarities are CHI-based semantic similarity, singular value decomposition (SVD)-based semantic similarity and Arabic WordNet-based semantic similarity. These similarities were compared with the existing similarities used by recommender systems from the literature. Findings Experiments show that the proposed semantic method using CHI-based similarity and using SVD-based similarity are more efficient than the existing methods on Arabic text in term of accuracy and execution time. Originality/value Although many previous works proposed recommender system methods for English text, very few works concentrated on Arabic Text. The field of Arabic Recommender Systems is largely understudied in the literature. Aside from this, there is a vital need to consider the semantic relationships behind user preferences to improve the accuracy of the recommendations. The contributions of this work are the following. First, as many recommender methods were proposed for English text and have never been tested on Arabic text, this work compares the performance of these widely used methods on Arabic text. Second, it proposes a novel semantic recommender method for Arabic text. As this method uses semantic similarity, three novel base semantic similarities were proposed and evaluated. Third, this work would direct the attention to more studies in this understudied topic in the literature.
机译:目的本文旨在提出一种新的有效的阿拉伯语内容语义推荐方法。设计/方法/方法提出了三种语义相似性与推荐器系统集成,以提高其基于语义方面的推荐能力。所提出的相似度是基于CHI的语义相似度,基于奇异值分解(SVD)的语义相似度和基于阿拉伯WordNet的语义相似度。将这些相似性与文献中推荐系统使用的现有相似性进行了比较。实验结果表明,所提出的基于CHI相似度和SVD相似度的语义方法在准确性和执行时间方面比现有的阿拉伯文本方法更为有效。原创性/价值尽管许多先前的作品都提出了针对英语文本的推荐系统方法,但很少有作品专注于阿拉伯文本。阿拉伯文推荐系统领域在文献中没有得到足够的研究。除此之外,迫切需要考虑用户偏好背后的语义关系,以提高建议的准确性。这项工作的贡献如下。首先,由于许多推荐方法针对英语文本提出,但从未在阿拉伯文本上进行过测试,因此这项工作比较了这些广泛使用的方法在阿拉伯文本上的性能。其次,提出了一种新颖的阿拉伯文本语义推荐方法。由于该方法使用语义相似性,因此提出并评估了三种新颖的基本语义相似性。第三,这项工作将把注意力转移到文献中这个未被充分研究的话题上的更多研究。

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