Developing New Software Metric Pattern Discovery for Text Mining
Keywords:
Text Mining, Pattern Mining, Pattern Evolving, Pattern ExtractionAbstract
In this paper data mining technique available which useful in mining the pattern of text document. However efficiently Research of new pattern which is useful and update the discover patterns is still an open research issue, especially in text mining field. Existing text mining methods have term based approaches and they have problems of polysemy and synonymy. To reduce these problems people develop the phrase (pattern) based approach. The phrase based approach is better than the term based approach but many experiments are not done in phrase based approach. In this we present the new innovative and effective pattern discovery method which has a process of pattern deploying and pattern evolving, which improve the efficiency and updating new pattern for finding appropriate and interacting information.
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Efficient Pattern Discovery for Text Mining, Ning Zhong, Yuefeng Li, Sheng-Tang Wu. IEEE Transactions on Knowledge and Data Engineering, VOL. 24, NO. 1, JANUARY 2012
Text Mining Approaches to Extract Interesting Association Rules from Text Documents Authors: Vishwadeepak Singh Baghela, Dr.S.Tripathi.
Evaluating Preprocessing Techniques in Text Categorization. Authors: V. Srividhya, R.
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