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首页> 外文期刊>Journal of computer sciences >Significant Term List Based Metadata Conceptual Mining Model for Effective Text Clustering
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Significant Term List Based Metadata Conceptual Mining Model for Effective Text Clustering

机译:基于有效术语列表的元数据概念挖掘模型,用于有效的文本聚类

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摘要

As the engineering world are growing fast, the usage of data for the day to day activity of the engineering industry also growing rapidly. In order to handle and to find the hidden knowledge from huge data storage, data mining is very helpful right now. Text mining, network mining, multimedia mining, trend analysis are few applications of data mining. In text mining, there are variety of methods are proposed by many researchers, even though high precision, better recall are still is a critical issues. In this study, text mining is focused and conceptual mining model is applied for improved clustering in the text mining. The proposed work is termed as Meta data Conceptual Mining Model (MCMM), is validated with few world leading technical digital library data sets such as IEEE, ACM and Scopus. The performance derived as precision, recall are described in terms of Entropy, F-Measure which are calculated and compared with existing term based model and concept based mining model.
机译:随着工程世界的快速增长,工程行业日常活动中数据的使用也迅速增长。为了处理和查找海量数据存储中的隐藏知识,数据挖掘现在非常有用。文本挖掘,网络挖掘,多媒体挖掘,趋势分析是数据挖掘的少数应用。在文本挖掘中,许多研究人员提出了各种各样的方法,尽管高精度,更好的查全率仍然是一个关键问题。在这项研究中,重点关注文本挖掘,并应用概念挖掘模型来改进文本挖掘中的聚类。这项拟议的工作被称为元数据概念挖掘模型(MCMM),并通过少数世界领先的技术数字图书馆数据集(例如IEEE,ACM和Scopus)进行了验证。根据熵,F度量来描述作为精度,召回率而得出的性能,这些性能将与现有的基于术语的模型和基于概念的挖掘模型进行比较。

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