Best First and Greedy Search Based CFS- Naïve Bayes Classification Algorithms for Hepatitis Diagnosis
T. Karthikeyan1 and P. Thangaraju2
1Department of Computer Science, PSG College of Arts and Science, Coimbatore, India. 2Department of Computer Applications, Bishop Heber College, Tiruchirappalli, India
ABSTRACT:
The main purpose of this paper is to deal with classification algorithm with feature selection is used to improve the prediction accuracy in the medical data. This paper applies best first search and greedy search as a searching methods and feature evaluator used as CFS. Naive Bayes classification algorithm is used for hepatitis patients’ dataset. It analyzes the data set taken from the UC Irvine machine learning repository. The result of the classification model is time and improved classification accuracy. Finally, it concludes that the proposed methodology performance is better than other classification algorithms.
KEYWORDS:
Classification; Correlation Based Feature Selection; Feature Selection; Hepatitis; Naïve Bayes
Download this article as:Copy the following to cite this article: Karthikeyan T, Thangaraju P. Best First and Greedy Search Based CFS- Naïve Bayes Classification Algorithms for Hepatitis Diagnosis. Biosci Biotech Res Asia 2015;12(1) |
Copy the following to cite this URL: Karthikeyan T, Thangaraju P. Best First and Greedy Search Based CFS- Naïve Bayes Classification Algorithms for Hepatitis Diagnosis. Biosci Biotech Res Asia 2015;12(1). Available from: https://www.biotech-asia.org/?p=5376 |