Performance Evaluation of Ensembles Algorithms in Prediction of Breast Cancer

Hungilo, Gilbert Gutabaga and Emmanuel, GAHIZI and Emanuel, Andi Wahju Rahardjo (2019) Performance Evaluation of Ensembles Algorithms in Prediction of Breast Cancer. In: PROGRAM BOOK OF JOINT CONFERENCE 3 IBITeC 2019--- The Empowerment Of Industry 4.0 For Healthcare And Welfare Improvement. Universitas Islam Indonesia, Yogyakarta, Indonesia, pp. 1-5.

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Text (Gilbert Gutabaga Hungilo, Gahizi Emmanuel and Andi W.R. Emanuel)
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Abstract

Breast Cancer is the most dominant cause of mortality in women. Early diagnosis and treatment of the disease can stop the spreading of cancer in the breast. Due to this nature of the problem, accurate prediction is the most important measure of the predictive model. This paper proposes the comparison of ensemble learning techniques in predicting breast cancer. Ensemble learning is widely used for performance improvement of the predictive task. The ensembles algorithms used in this research study are AdaBoost, Random Forest, and XGBoost with data from Wisconsin hospitals. The result indicates that the random forest is the best predictive model for this dataset. The model has the following performance measure, accuracy 97%, sensitivity 96%, and specificity 96%. The experiment is executed using scikit-learn machine learning library. With this high level of accuracy offered by the model, the model can help the doctor to identify whether the patient has malignant or benign tumor cancer cells with high precision.

Item Type: Book Section
Uncontrolled Keywords: Predictive Model; Breast Cancer; Ensemble Learning; Machine Learning.
Subjects: Magister Teknik Informatika > Inovation of Computational Science
Divisions: Pasca Sarjana > Magister Teknik Informatika
Depositing User: Editor 3 uajy
Date Deposited: 26 Feb 2022 11:09
Last Modified: 26 Feb 2022 11:09
URI: http://e-journal.uajy.ac.id/id/eprint/26458

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