Comparison of Classification Success Rates of Different Machine Learning Algorithms in the Diagnosis of Breast Cancer

Objective: To identify which Machine Learning (ML) algorithms are the most successful in predicting and diagnosing breast cancer according to accuracy rates. Methods: The “College of Wisconsin Breast Cancer Dataset”, which consists of 569 data and 30 features, was classified using Support Vector Machine (SVM), Naive Bayes (NB), Random Forest (RF), Decision Tree (DT), K-Nearest Neighbor (KNN), Logistic Regression (LR), Multilayer Perceptron (MLP), Linear Discriminant Analysis (LDA), XgBoost (XGB), Ada-Boost (ABC) and Gradient Boosting (GBC) ML algorithms. Before the classification process, the dataset was preprocessed. Sensitivity, accuracy, and definiteness metrics were used to measure the success of the methods. Result: Compared to other ML algorithms used in the study, the GBC ML algorithm was found to be the most successful method in the classification of tumors with an accuracy of 99.12%. The XGB ML algorithm was found to be the lowest method with an accuracy rate of 88.10%. In addition, it was determined that the general accuracy rates of the 11 ML algorithms used in the study varied between 88-95%.Conclusion: When the results obtained from the ML classifiers used in the study are evaluated, the efficiency of the GBC algorithm in the classification of tumors is obvious. It can be said that the success rates obtained from 11 different ML algorithms used in the study are valuable in terms of being used to predict different cancer types.

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Eser Adı
(dc.title)
Comparison of Classification Success Rates of Different Machine Learning Algorithms in the Diagnosis of Breast Cancer
Yazar
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Hakan Aydın
Yayın Yılı
(dc.date.issued)
2022
Tür
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Makale
Özet
(dc.description.abstract)
Objective: To identify which Machine Learning (ML) algorithms are the most successful in predicting and diagnosing breast cancer according to accuracy rates. Methods: The “College of Wisconsin Breast Cancer Dataset”, which consists of 569 data and 30 features, was classified using Support Vector Machine (SVM), Naive Bayes (NB), Random Forest (RF), Decision Tree (DT), K-Nearest Neighbor (KNN), Logistic Regression (LR), Multilayer Perceptron (MLP), Linear Discriminant Analysis (LDA), XgBoost (XGB), Ada-Boost (ABC) and Gradient Boosting (GBC) ML algorithms. Before the classification process, the dataset was preprocessed. Sensitivity, accuracy, and definiteness metrics were used to measure the success of the methods. Result: Compared to other ML algorithms used in the study, the GBC ML algorithm was found to be the most successful method in the classification of tumors with an accuracy of 99.12%. The XGB ML algorithm was found to be the lowest method with an accuracy rate of 88.10%. In addition, it was determined that the general accuracy rates of the 11 ML algorithms used in the study varied between 88-95%.Conclusion: When the results obtained from the ML classifiers used in the study are evaluated, the efficiency of the GBC algorithm in the classification of tumors is obvious. It can be said that the success rates obtained from 11 different ML algorithms used in the study are valuable in terms of being used to predict different cancer types.
Açık Erişim Tarihi
(dc.date.available)
2022-12-25
Yayıncı
(dc.publisher)
Asian Pacific Organization for Cancer Prevention
Dil
(dc.language.iso)
En
Konu Başlıkları
(dc.subject)
Machine learning
Konu Başlıkları
(dc.subject)
breast cancer
Konu Başlıkları
(dc.subject)
classification
Konu Başlıkları
(dc.subject)
data management
Konu Başlıkları
(dc.subject)
information systems
Tek Biçim Adres
(dc.identifier.uri)
https://hdl.handle.net/20.500.14081/1652
ISSN
(dc.identifier.issn)
1513-7368
Dergi
(dc.relation.journal)
Asian Pacific Journal of Cancer Prevention
Dergi Sayısı
(dc.identifier.issue)
10
Esere Katkı Sağlayan
(dc.contributor.other)
57669060800
Esere Katkı Sağlayan
(dc.contributor.other)
Ozcan, Irem
Esere Katkı Sağlayan
(dc.contributor.other)
Cetinkaya, Ali
DOI
(dc.identifier.doi)
10.31557/APJCP.2022.23.10.3287
Orcid
(dc.identifier.orcid)
0000-0002-0122-8512
Bitiş Sayfası
(dc.identifier.endpage)
3297
Başlangıç Sayfası
(dc.identifier.startpage)
3287
Department
(dc.contributor.department)
Bilgisayar Mühendisliği (İngilizce)
Veritabanları
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Scopus
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PubMed
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6698 sayılı Kişisel Verilerin Korunması Kanunu kapsamında yükümlülüklerimiz ve çerez politikamız hakkında bilgi sahibi olmak için alttaki bağlantıyı kullanabilirsiniz.
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