Enhanced Classification Model for Cervical Cancer Dataset based on Cost Sensitive Classifier
Journal: International Journal of Computer Techniques (Vol.4, No. 4)Publication Date: 2017-07-01
Authors : Hayder K. Fatlawi;
Page : 115-120
Keywords : Decision Tree; Cost Sensitive Classifier; Cervical Cancer; Imbalance Class;
Abstract
Cervical cancer threatens the lives of many women in our world today. In 2014, the number of women infected with this disease in the United States was 12,578, of which 4,115 died, with a death rate of nearly 32%. Cancer data, including cervical cancer datasets, represent a significant challenge data mining techniques because absence of different costs for error cases. The proposed model present a cost sensitive classifiers that has three main stages; the first stage is prepressing the original data to prepare it for classification model which is build based on decision tree classifier with cost selectivity and finallyevaluation the proposed model based on many metrics in addition to apply a cross validation.The proposed model provides more accurate result in both binary class and multi class classification. It has a TP rate (0.429) comparing with (0.160) for typical decision tree in binary class task.
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Last modified: 2018-05-18 21:00:59