Concept Based Labeling of Text Documents Using Support Vector Machine

Main Article Content

K.Nithya, M.Saranya, C.R.Dhivyaa

Abstract

Classification plays a vital role in many information management and retrieval tasks . Text classification uses labeled training data to learn the classification system and then automatically classifies the remaining text using the lear ned system. Classification follows various techniques such as text processing, feature extraction, feature vector construction and final classification. The proposed mining model consists of sentence - based concept analysis, document - based concept analysis, corpus - based concept - analysis, and concept - based similarity measure. The proposed model can efficiently find significant matching concepts between documents, according to the semantics of their sentences. The similarity between documents is calculate d bas ed on a n similarity measure. Then we analyze the term that contributes to the sentence semantics on the sentence, document, and corpus levels rather than the traditional analysis of the document only. With the extracted feature vector for each new document, Support Vector Machine (SVM) algorithm is applied for document classification. The approach enhances the text classification accuracy.

Article Details

How to Cite
, K. M. C. (2014). Concept Based Labeling of Text Documents Using Support Vector Machine. International Journal on Recent and Innovation Trends in Computing and Communication, 2(3), 541–544. https://doi.org/10.17762/ijritcc.v2i3.3006
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Articles