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Semantic Analysis of Wikipedia documents using Ontology

机译:使用本体论的维基百科文档的语义分析

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摘要

There is a boom in the growth of information available freely on the web where a search engine builds for a decisive component in understanding the content of the web pages and also serving the user queries according to their relevant information. The semantic web offers a hopeful approach in this context, ontologies can semantically seize concepts for any issue which will empower tools to accord the data semantically. In this paper, a proposed technique is developed which uses a score or weight based semantic relation between the user queries and gives a more relevant result. This system is moderated to Wikipedia related article as they are extracted from Wikipedia api. The similarity level between two articles is computed based on keyword content by computing similarity between two documents. We study various proposal in this regard thus the proposed system tries to optimize the results and the state-of-the-art analysis is presented. Likened to other similarity method, the proposed technique shows the highest Pearson correlation coefficient.
机译:在网络上可自由提供的信息的增长,其中搜索引擎在理解网页的内容以及根据相关信息提供用户查询的决定性组件中建立了决定性组件。语义Web在这种情况下提供了一种充满希望的方法,在本文中,本体可以在语义上抓住任何问题的概念,这将从语义上启动工具来赋予数据。在本文中,开发了一种提出的技术,其使用用户查询之间的得分或权重的语义关系,并提供更相关的结果。该系统适用于维基百科相关文章,因为它们是从维基百科API中提取的。通过计算两个文档之间的相似性来计算两个文章之间的相似度水平。我们在这方面研究了各种建议,因此建议的系统试图优化结果,并提出了最先进的分析。比作其他相似性方法,所提出的技术显示了最高的Pearson相关系数。

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