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Data Mining Techniques for Text Mining

Affiliations

  • Department of Computer Science and Engineering, Lovely Professional University, Punjab, India

Abstract


Semantic text mining is an abstraction of acknowledge based on the meaning. Semantic terms are explained, phrases or words. The searching terms concern their weight is computed corresponding to their synonyms, and the term which has maximum weight is at the top. The determined technique will make use of neural technique for clustering the document present to their meaning. If various words which have similar meaning are present in document then it will cluster it in similar cluster. Increment the cluster quality neural network approach, with semantic based analyzer is used popularized.

Keywords

Data Mining, Pattern Taxonomy Model, Text Clustering, Text Mining.

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References


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