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"An investigation of ensemble learning methods in classification problems and an application on non-small-cell lung cancer data"

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dc.contributor.author Kıvrak, Mehmet
dc.contributor.author Çolak, Cemil
dc.date.accessioned 2022-12-27T09:35:52Z
dc.date.available 2022-12-27T09:35:52Z
dc.date.issued 2022
dc.identifier.citation KIVRAK M, ÇOLAK C (2022). An investigation of ensemble learning methods in classification problems and an application on non-small-cell lung cancer data. Medicine Science, 11(2), 924 - 933. 10.5455/medscience.2021.10.339 en_US
dc.identifier.uri https://search.trdizin.gov.tr/yayin/detay/529902/an-investigation-of-ensemble-learning-methods-in-classification-problems-and-an-application-on-non-small-cell-lung-cancer-data
dc.identifier.uri http://hdl.handle.net/11616/85924
dc.description.abstract This study aims to classify NSCLC death status and consists of patient records of 24 variables created by the open-source dataset of the cancer data site. Besides, basic classifiers such as SMO (Sequential Minimal Optimization), K-NN (K-Nearest Neighbor), random forest, and XGBoost (Extreme Gradient Boosting), which are machine learning methods, and their performances, and voting, bagging, boosting, and stacking methods from ensemble learning methods were used. Performance evaluation of models was compared in terms of accuracy, specificity, sensitivity, precision, and Roc curve. The basic classifier performances of random forest, SMO, K-NN, and XGBoost classifiers, their performances in the bagging ensemble learning method, and their performances in the boosting ensemble learning method are evaluated. In addition, Model 1 (random forest + SMO), Model 2 (XGBoost + K-NN), Model 3 (random forest + K-NN), Model 4 (XGBoost+SMO), Model 5 (SMO+K-NN + random forest), Model 6 (SMO+K-NN+XGBoost) and Model 7 (SMO+K-NN + random forest + XGBoost) the performances of in different metrics were expressed. The boosting ensemble learning method, which provides the maximum classification performance with XGBoost, achieved a 0.982 accuracy value, 0.971 sensitivity value, 0.989 precision value, 0.989 specificity value, and 0.998 ROC curve. It is recommended to use ensemble learning methods for classification problems in patients with a high prevalence of cancer to achieve successful results. en_US
dc.language.iso eng en_US
dc.rights info:eu-repo/semantics/openAccess en_US
dc.title "An investigation of ensemble learning methods in classification problems and an application on non-small-cell lung cancer data" en_US
dc.type article en_US
dc.relation.ispartof Medicine Science en_US
dc.department İnönü Üniversitesi en_US


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