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首页> 外文期刊>Research journal of applied science, engineering and technology >An Efficient EM based Ontology Text-mining to Cluster Proposals for Research Project Selection
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An Efficient EM based Ontology Text-mining to Cluster Proposals for Research Project Selection

机译:基于EM的高效本体文本挖掘技术,用于研究项目选择的提案聚类

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Both the internet and the intranets contain more resources and they are called as text documents. Research and Development (R&D) scheme selection is a type of decision-making normally present in government support agencies, universities, research institutes and technology intensive companies. Text Mining has come out as an authoritative technique for extracting the unknown information from large text document. Ontology is defined as a knowledge storehouse in which concepts and conditions are defined in addition to relationships between these concepts. Ontology's build the task of searching alike pattern of text that to be more effectual, efficient and interactive. The present method for combine proposals for selection of research project is proposed by ontology based text mining technique to the data mining approach of cluster research proposals support on their likeness in research area. This proposed method is efficient and effective for clustering research proposals. Though the research proposal regarding particular research area is cannot always be accurate. This study proposed an ontology based text mining to group research proposals, external reviewers based on their research area. The proposed method like Efficient Expectation-Maximization algorithm (EEM) is used to cluster the research proposal and gives better results in more efficient way.
机译:Internet和Intranet都包含更多资源,它们被称为文本文档。研究与开发(R&D)方案的选择是政府支持机构,大学,研究机构和技术密集型公司中通常存在的一种决策类型。文本挖掘已成为一种从大型文本文档中提取未知信息的权威技术。本体被定义为一个知识仓库,其中除了这些概念之间的关系之外,还定义了概念和条件。本体论的任务是搜索更有效,更有效和更具交互性的相似文本模式。通过基于本体的文本挖掘技术,提出了研究方案选择方案的组合方法,以支持集群研究方案在研究领域的相似性。这种提出的方​​法对于聚类研究提议是有效的。尽管关于特定研究领域的研究建议并非总是准确的。这项研究提出了一种基于本体的文本挖掘,以将研究建议,外部审阅者根据其研究领域进行分组。提出的有效期望最大化算法(EEM)等方法用于对研究提议进行聚类,并以更有效的方式给出更好的结果。

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