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Evaluation of Decision Tree, K-NN, Naive Bayes and SVM with MWMOTE on UCI Dataset

Meida Cahyo Untoro, Mugi Praseptiawan, Mastuti Widianingsih, Ilham Firman Ashari, Aidil Afriansyah, Oktafianto

2020Journal of Physics Conference Series25 citationsDOIOpen Access PDF

Abstract

Abstract Imbalanced data causes misclassification because the majority of the dominant data is in the minority data, which results in a decrease in the value of accuracy. UCI dataset is a public dataset that can be used as a dataset in machine learning. This study aims to evaluate the Decision Tree, K-NN, Naive Bayes, and Support Vector Machine classification methods on data imbalances in MWMOTE. MWMOTE is used in resolving Imbalanced cases through weighting and grouping. This goal is achieved by evaluating the Decision Tree, K-NN, Naive Bayes, and Support Vector Machine classification methods in MWMOTE to produce more representative synthetic data and increase the accuracy value. The results obtained from this study indicate that the Decision Tree has higher evaluations of recall, precision, F-measure, and accuracy compared to K-NN, Naive Bayes, and Support Vector Machine for data that are balanced with MWMOTE.

Topics & Concepts

Naive Bayes classifierSupport vector machineDecision treeArtificial intelligenceComputer scienceMachine learningWeightingTree (set theory)Pattern recognition (psychology)Data miningPrecision and recallBayes' theoremMathematicsBayesian probabilityMathematical analysisMedicineRadiologyImbalanced Data Classification TechniquesFinancial Distress and Bankruptcy PredictionData Mining and Machine Learning Applications
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