2019
DOI: 10.35940/ijrte.c5391.098319
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Discriminant Pearson Correlative Feature Selection based Gentle Adaboost Classification for Medical Document Mining

Abstract: This paper examines Discriminant Pearson Correlative Analysis Based Multivariate Gentle Adaboost Classification (DPCA-MGAC) and it is used to improve the performance of medical document mining with minimum time complexity. A large number of documents are collected from PubMed databases through the semantic-based search. Processes such as removing stop words, stemming, features identification, selection of features i.e., relevant keywords for document classification are carried out. The significant feature sele… Show more

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