Nomenclature and Contemporary Affirmation of the Unsupervised Learning in Text and Document Mining
Nomenclature and Contemporary Affirmation of the Unsupervised Learning in Text and Document Mining
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Keywords

Document clustering is primarily a method applied for an uncomplicated
document search
analysis and review of content or is a process of automatic c

How to Cite

Annaluri Sreenivasa Rao, & Prof. S. Ramakrishna. (2015). Nomenclature and Contemporary Affirmation of the Unsupervised Learning in Text and Document Mining. Global Journal of Computer Science and Technology, 15(C2), 15–21. Retrieved from https://gjcst.com/index.php/gjcst/article/view/1023

Abstract

Document clustering is primarily a method applied for an uncomplicated document search analysis and review of content or is a process of automatic classification of documents of similar type categorized to relevant clusters in a clustering hierarchy In this paper a review of the related work in the field of document clustering from the simple techniques of word and phrase to the present complex techniques of statistical analysis machine learning etc are illustrated with their implications for future research work
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