International Journal of Computer Applications |
Foundation of Computer Science (FCS), NY, USA |
Volume 51 - Number 19 |
Year of Publication: 2012 |
Authors: Varun Kumar.m, Vijaya Sharathi.v, Gayathri Devi.b.r |
10.5120/8150-1856 |
Varun Kumar.m, Vijaya Sharathi.v, Gayathri Devi.b.r . Hepatitis Prediction Model based on Data Mining Algorithm and Optimal Feature Selection to Improve Predictive Accuracy. International Journal of Computer Applications. 51, 19 ( August 2012), 13-16. DOI=10.5120/8150-1856
Data mining techniques are widely used in classification and prediction in the field of bioinformatics. This even helps in identifying the relationships and patterns in the data which helps in construction of prediction model. Classification and prediction model supports medical diagnosis which helps in improving the quality of patients. Noisy features are identified and eliminated by chi-square attribute evaluation which may further improve the classification accuracy of support vector machine. Hepatitis patients are those who need continuous special medical treatment to reduce mortality rate. Machine learning technologies are used for classification and prediction for Hepatitis patients.