Abstract

Feature selection approaches are used to improve the efficiency of the clinical databases in the machine learning classification. Since, most of the conventional feature selection and classification approaches are difficult to handle high dimensionality for pattern evaluation. Also these models are difficult to filter noise on different heterogeneous features. In this work, a hybrid data transformation and outlier detection methods are developed on the clinical databases to improve the classification accuracy. Experimental results show that the present model has better accuracy in evaluating the accuracy than the conventional models on clinical databases.

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