个性化搜索引擎关键字提取方法的比较分析

Shaurya Uppal, Arti Jain, Anuja Arora
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引用次数: 3

摘要

文本挖掘是指从非结构化文本数据中提取某些重要的、隐藏的和有趣的知识。在本文中,努力的方向是解释医疗保健领域的文本挖掘查询。为此,数据集取自2015年成立的1mg公司,该公司为数百万人提供透明、真实和可访问的医疗信息,同时指导客户以可承受的价格获得优质的医疗服务。本文比较了不同的文本挖掘算法,以生成关键字的知识提取,同时将个性化搜索概念与医疗保健领域联系起来,并提供更好的搜索建议。这些算法有:基本TF-IDF、带IDF的SGRank、TextRank和改进TF-IDF。使用带有Shingle分析仪的改良TF-IDF获得最佳结果,其中释放后总体减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis for KeyTerms Extraction Methods for Personalized Search Engines
Text Mining refers to an extraction of certain nontrivial, hidden and interesting knowledge from an unstructured textual data. In this paper, efforts are directed to interpret text mining queries in the healthcare domain. To do so, the dataset is taken from the 1mg-company that has emerged during 2015 to provide transparent, authentic and accessible healthcare information for the millions of people while guiding customers with the quality care that too at affordable prices. The different text mining algorithms are compared to generate knowledge extraction of keyterms while linking the personalized search concepts with respect to the healthcare domain, and for the better search recommendations. The algorithms are: basic TF-IDF, SGRank with IDF, TextRank, and modified TF-IDF. The best results are obtained with the modified TF-IDF with the Shingle analyzer where post-release overall is reduced.
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