Nomenclature and Benchmarking Models of Text Classification Models: Contemporary Affirmation of the Recent Literature

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CSTSDE3C0L7

Nomenclature and Benchmarking Models of Text Classification Models: Contemporary Affirmation of the Recent Literature

Venkata Ramana.A
Venkata Ramana.A S.V.University,
Dr. E. Kesavulu Reddy
Dr. E. Kesavulu Reddy
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Abstract

In this paper we present automated text classification in text mining that is gaining greater relevance in various fields every day. Text mining primarily focuses on developing text classification systems able to automatically classify huge volume of documents, comprising of unstructured and semi structured data. The process of retrieval, classification and summarization simplifies extract of information by the user. The finding of the ideal text classifier, feature generator and distinct dominant technique of feature selection leading all other previous research has received attention from researchers of diverse areas as information retrieval, machine learning and the theory of algorithms. To automatically classify and discover patterns from the different types of the documents [1], techniques like Machine Learning, Natural Language Processing (NLP) and Data Mining are applied together. In this paper we review some effective feature selection researches and show the results in a table form.

Nomenclature and Benchmarking Models of Text Classification Models: Contemporary Affirmation of the Recent Literature

In this paper we present automated text classification in text mining that is gaining greater relevance in various fields every day. Text mining primarily focuses on developing text classification systems able to automatically classify huge volume of documents, comprising of unstructured and semi structured data. The process of retrieval, classification and summarization simplifies extract of information by the user. The finding of the ideal text classifier, feature generator and distinct dominant technique of feature selection leading all other previous research has received attention from researchers of diverse areas as information retrieval, machine learning and the theory of algorithms. To automatically classify and discover patterns from the different types of the documents [1], techniques like Machine Learning, Natural Language Processing (NLP) and Data Mining are applied together. In this paper we review some effective feature selection researches and show the results in a table form.

Venkata Ramana.A
Venkata Ramana.A S.V.University,
Dr. E. Kesavulu Reddy
Dr. E. Kesavulu Reddy

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Venkata Ramana.A. 2015. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 14 (GJCST Volume 14 Issue C9): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

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GJCST Volume 14 Issue C9
Pg. 19- 34
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Nomenclature and Benchmarking Models of Text Classification Models: Contemporary Affirmation of the Recent Literature

Venkata Ramana.A
Venkata Ramana.A S.V.University,
Dr. E. Kesavulu Reddy
Dr. E. Kesavulu Reddy

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