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Semantic Similarity Measures to Disambiguate Terms in Medical Text

机译:语义相似性措施可消除医学文本中的歧义

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摘要

Computing the semantic similarity accurately between words is an important but challenging task in the semantic web field. However, the semantic similarity measures involve the comprehensiveness of knowledge learning and the sufficient training of words of both high and low frequency. In this study, an approach MedSim is presented for semantic similarity measures to identify synonym terms in medical text with effectiveness and accuracy well-balanced. Experimental results on Chinese medical text demonstrate that our proposed method has robust superiority over competitors for synonym identification.
机译:准确计算单词之间的语义相似度是语义Web领域中一项重要但具有挑战性的任务。但是,语义相似性度量涉及知识学习的全面性以及对高频和低频单词的充分训练。在这项研究中,提出了一种MedSim方法,用于语义相似性度量,以在有效性和准确性之间取得良好平衡的情况下识别医学文本中的同义词术语。在中医学文本上的实验结果表明,我们提出的方法在同义词识别方面具有优于竞争对手的鲁棒优势。

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