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Text mining in 'request for comments document series'

机译:文本挖掘'申请评论文档系列'

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This paper discusses the knowledge discovery in Text (KDT) system for the 'Request for Comments (RFC) Document Series'. The paper proposes versatile system architecture for the Text Mining in RFC that maintains structured and unstructured data components of the document. The documents are represented by keywords and know/edge discovery is performed by analysing the co-occurrence frequencies of the various keywords representing the document. The clustering of the documents is done by extracted knowledge, which can reduce the search space for searching The relevant documents retrieved during the search process for a query are ranked based on the relevance of topic in it. This paper describes RFC Viewer, our tool for viewing the RFC document in rich text format rather than in text format. it also provides the knowledge extracted from the RFC document and supports various KDD Operations on the document.
机译:本文讨论了文本(KDT)系统中的知识发现,了解“评论(RFC)文档系列”的请求。本文提出了用于RFC中的文本挖掘的多功能系统架构,用于维护文档的结构化和非结构化数据组件。这些文件由关键字表示,并通过分析表示文档的各种关键字的共发生频率来执行知识/边缘发现。文档的群集是通过提取的知识完成的,这可以减少搜索搜索在搜索过程中检索的相关文档的搜索空间根据主题中的主题的相关性排序。本文介绍了RFC查看器,我们的工具以丰富的文本格式查看RFC文档而不是文本格式。它还提供从RFC文档中提取的知识,并支持文档上的各种KDD操作。

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