Wart treatment method selection using AdaBoost with random forests as a weak learner

Selection of wart treatment method using machine learning is being a concern to researchers. Machine learning is expected to select the treatment of warts such as cryotherapy and immunotherapy to patients appropriately. In this study, the data used were cryotherapy and immunotherapy datasets. This s...

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Main Authors: M. Azka Putra, Noor Akhmad Setiawan, Sunu Wibirama
Format: Article
Language:English
Published: Komunitas Ilmuwan dan Profesional Muslim Indonesia 2018-12-01
Series:Communications in Science and Technology
Subjects:
Online Access:https://cst.kipmi.or.id/index.php/cst/article/view/96
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spelling doaj-990a17a5ebce477bb1eec9e8cdf1c9e62020-11-25T01:38:07ZengKomunitas Ilmuwan dan Profesional Muslim IndonesiaCommunications in Science and Technology2502-92582502-92662018-12-0132525696Wart treatment method selection using AdaBoost with random forests as a weak learnerM. Azka Putra0Noor Akhmad Setiawan1Sunu Wibirama2Department of Electrical Engineering and Information Technology, University Gadjah MadaDepartment of Electrical Engineering and Information Technology, University Gadjah MadaDepartment of Electrical Engineering and Information Technology, University Gadjah MadaSelection of wart treatment method using machine learning is being a concern to researchers. Machine learning is expected to select the treatment of warts such as cryotherapy and immunotherapy to patients appropriately. In this study, the data used were cryotherapy and immunotherapy datasets. This study aims to improve the accuracy of wart treatment selection with machine learning. Previously, there are several algorithms have been proposed which were able to provide good accuracy in this case. However, the existing results still need improvement to achieve better level of accuracy so that treatment selection can satisfy the patients. The purpose of this study is to increase the accuracy by improving the performance of weak learner algorithm of ensemble machine learning. AdaBoost is used in this study as a strong learner and Random Forest (RF) is used as a weak learner. Furthermore, stratified 10-fold cross validation is used to evaluate the proposed algorithm. The experimental results show accuracy of 96.6% and 91.1% in cryotherapy and immunotherapy respectively.https://cst.kipmi.or.id/index.php/cst/article/view/96AdaBoost; cryotherapy; immunotherapy; random forest
collection DOAJ
language English
format Article
sources DOAJ
author M. Azka Putra
Noor Akhmad Setiawan
Sunu Wibirama
spellingShingle M. Azka Putra
Noor Akhmad Setiawan
Sunu Wibirama
Wart treatment method selection using AdaBoost with random forests as a weak learner
Communications in Science and Technology
AdaBoost; cryotherapy; immunotherapy; random forest
author_facet M. Azka Putra
Noor Akhmad Setiawan
Sunu Wibirama
author_sort M. Azka Putra
title Wart treatment method selection using AdaBoost with random forests as a weak learner
title_short Wart treatment method selection using AdaBoost with random forests as a weak learner
title_full Wart treatment method selection using AdaBoost with random forests as a weak learner
title_fullStr Wart treatment method selection using AdaBoost with random forests as a weak learner
title_full_unstemmed Wart treatment method selection using AdaBoost with random forests as a weak learner
title_sort wart treatment method selection using adaboost with random forests as a weak learner
publisher Komunitas Ilmuwan dan Profesional Muslim Indonesia
series Communications in Science and Technology
issn 2502-9258
2502-9266
publishDate 2018-12-01
description Selection of wart treatment method using machine learning is being a concern to researchers. Machine learning is expected to select the treatment of warts such as cryotherapy and immunotherapy to patients appropriately. In this study, the data used were cryotherapy and immunotherapy datasets. This study aims to improve the accuracy of wart treatment selection with machine learning. Previously, there are several algorithms have been proposed which were able to provide good accuracy in this case. However, the existing results still need improvement to achieve better level of accuracy so that treatment selection can satisfy the patients. The purpose of this study is to increase the accuracy by improving the performance of weak learner algorithm of ensemble machine learning. AdaBoost is used in this study as a strong learner and Random Forest (RF) is used as a weak learner. Furthermore, stratified 10-fold cross validation is used to evaluate the proposed algorithm. The experimental results show accuracy of 96.6% and 91.1% in cryotherapy and immunotherapy respectively.
topic AdaBoost; cryotherapy; immunotherapy; random forest
url https://cst.kipmi.or.id/index.php/cst/article/view/96
work_keys_str_mv AT mazkaputra warttreatmentmethodselectionusingadaboostwithrandomforestsasaweaklearner
AT noorakhmadsetiawan warttreatmentmethodselectionusingadaboostwithrandomforestsasaweaklearner
AT sunuwibirama warttreatmentmethodselectionusingadaboostwithrandomforestsasaweaklearner
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