Classification of Cervical Cancer Dataset

Al-Wesabi Y.M.S., Choudhury A: Classification of Cervical Cancer Dataset. In: Proceedings of the 2018 IISE Annual Conference. Edited by K. Barker, D. Berry, C. Rainwater: 2018; Orlando: IISE; 2018:1456-1461.

6 Pages Posted: 30 Sep 2019

See all articles by Y. M. S. Al-Wesabi

Y. M. S. Al-Wesabi

Binghamton University

Avishek Choudhury

West Virginia University - Industrial and Management Systems Engineering; West Virginia University

Daehan Won

Binghamton University

Multiple version iconThere are 2 versions of this paper

Date Written: December 7, 2018

Abstract

Cervical cancer is the leading gynecological malignancy worldwide. This paper presents diverse classification techniques and shows the advantage of feature selection approaches to the best predicting of cervical cancer disease. There are thirty-two attributes with eight hundred and fifty-eight samples. Besides, this data suffers from missing values and imbalance data. Therefore, over-sampling, under-sampling and embedded over and under sampling have been used. Furthermore, dimensionality reduction techniques are required for improving the accuracy of the classifier. Therefore, feature selection methods have been studied as they divided into two distinct categories, filters and wrappers. The results show that age, first sexual intercourse, number of pregnancies, smokes, hormonal contraceptives, and STDs: genital herpes are the main predictive features with high accuracy with 97.5%. Decision Tree classifier is shown to be advantageous in handling classification assignment with excellent performance.

Keywords: Cervical cancer, feature selection, classification, imbalanced data, over-sampling

Suggested Citation

Al-Wesabi, Y. M. S. and Choudhury, Avishek and Won, Daehan, Classification of Cervical Cancer Dataset (December 7, 2018). Al-Wesabi Y.M.S., Choudhury A: Classification of Cervical Cancer Dataset. In: Proceedings of the 2018 IISE Annual Conference. Edited by K. Barker, D. Berry, C. Rainwater: 2018; Orlando: IISE; 2018:1456-1461., Available at SSRN: https://ssrn.com/abstract=3440430

Y. M. S. Al-Wesabi

Binghamton University

PO Box 6001
Binghamton, NY 13902-6000
United States

Avishek Choudhury (Contact Author)

West Virginia University - Industrial and Management Systems Engineering ( email )

West Virginia University ( email )

1347 Evansdale Dr
Morgantown, WV WV 26506
United States

Daehan Won

Binghamton University

PO Box 6001
Binghamton, NY 13902-6000
United States

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