基于词嵌入的阿拉伯语句子语义相似度研究

Badrya Dahy, M. Farouk, Khaled Fathy
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引用次数: 0

摘要

自然语言处理非常重视语义文本相似度。它在各种nlp应用中都很有用,包括信息检索、剽窃检测、数据提取和机器翻译。由于阿拉伯文资源的缺乏,对阿拉伯文句子相似度的研究尚未深入。此外,准确地计算阿拉伯语句子之间的相似度也是至关重要的。本研究提出了确定阿拉伯语句子语义相似度的方法。该策略使用词嵌入来衡量词之间的相似度。此外,将多个相似度量组合起来计算最终的相似度。此外,由于缺乏阿拉伯语资源,构建了一个新的评估相似技术的数据集。新的数据集可供公众使用。实验证明了所提策略的有效性。两个数据集用于比较其他方法。实验表明,本文提出的方法在测量阿拉伯语句子相似度方面优于其他方法。
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Arabic Sentences Semantic Similarity Based on Word Embedding
Natural language processing pays significant attention to semantic textual similarity. It's useful in a variety of NLP-applications, including information retrieval, plagiarism detection, data extraction, and machine translation. Sentence similarity in the Arabic language has not been investigated deeply because of the lack of Arabic language resources. Moreover, it's critical to calculate the degree of similarity between Arabic sentences accurately. The method for determining the semantic similarity of Arabic sentences is suggested in this research. The strategy suggested uses word embedding to measure the similarity between words. Moreover, more than one similarity measure is combined to calculate the final similarity. Furthermore, due to the lack of Arabic resources, a new dataset for evaluating similarity techniques has been constructed. The new dataset is available for public use. An experiment have been conducted to show the efficiency of the strategy suggested. Two datasets are used to compare other approaches. Experiments reveal that the proposed methods outperform alternative approaches to measuring sentence similarity in the Arabic language.
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