Please use this identifier to cite or link to this item: https://publication.npru.ac.th/jspui/handle/123456789/1933
Title: The Efficiency Comparison of Data Classification Ensemble Techniques for Breast Cancer Patients Dataset
Other Titles: การเปรียบเทียบประสิทธิภาพเทคนิคกลุ่มก้อนการจาแนกข้อมูล โดยใช้ชุดข้อมูลผู้ป่วยมะเร็งเต้านม
Authors: Limkulakhom, Tada
Hengpraprohm, Kairung
Hengpraprohm, Supojn
Keywords: ensemble classification,
K-Nearest Neighbor
Neural Network
Decision tree
Support Vector Machine
Majority vote
Bagging
Issue Date: 14-Jul-2023
Publisher: The 15th NPRU National Academic Conference Nakhon Pathom Rajabhat University
Series/Report no.: Proceedings of the 15th NPRU National Academic Conference;578
Abstract: The objectives of this research are to 1) study the majority vote ensemble and bootstrap aggregating techniques, and 2) compare the efficiency of the ensemble data classification using 4 data mining techniques including k-nearest neighbor, artificial neural network, decision tree, and support vector machine: with the majority vote ensemble and bootstrap aggregating techniques for classification of breast cancer patient data. The results of the study show that the method that gives the best performance is majority vote and bootstrap aggregating of the artificial neural network by giving a classification accuracy of 97.66, a recall of 93.75 and a precision of 96.4. Followed by the artificial neural network give an accuracy of 97.08, a recall of 93.75 and a precision of 98.36.
URI: https://publication.npru.ac.th/jspui/handle/123456789/1933
ISBN: 978-974-7063-43-1
Appears in Collections:Proceedings of the 15th NPRU National Academic Conference

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