COMPARISON OF SUPPORT VECTOR MACHINE AND DECISION TREE METHODS IN THE CLASSIFICATION OF BREAST CANCER

Helmi Imaduddin, Brian Aditya Hermansyah, B. FrischaAuraSalsabilla
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引用次数: 2

Abstract

One of the most dangerous cancers in the world is breast cancer. This cancer occurs in many women, in some cases this cancer can also affect men, but it is very rare. The effects of this cancer are very dangerous for humans, in the worst case it can lead to death. So that serious prevention is needed against this cancer. One prevention can be done by early detection. This study aims to implement machine learning methods to detect breast cancer in women. The algorithms used are Support Vector Machine (SVM) and Decision Tree (DT). After classifying the data provided, a comparison is made to find out which machine learning method has the best performance. The data used comes from the Gynecology Department of the University Hospital Center of Coimbra (CHUC), and can be downloaded for free on the UCI repository website. The results of this study indicate that the SVM algorithm with feature selection obtains the best classification results by obtaining an accuracy of 87.5%, a sensitivity of 90%, and a specificity of 85%. Thus this research obtains good results to be able to help provide solutions to detect breast cancer.
支持向量机与决策树方法在乳腺癌分类中的比较
世界上最危险的癌症之一是乳腺癌。这种癌症发生在许多女性身上,在某些情况下,这种癌症也会影响男性,但这是非常罕见的。这种癌症对人类的影响是非常危险的,在最坏的情况下可能导致死亡。所以我们需要认真预防这种癌症。一种预防方法是早期发现。本研究旨在实施机器学习方法来检测女性乳腺癌。使用的算法是支持向量机(SVM)和决策树(DT)。在对提供的数据进行分类后,进行比较,找出哪种机器学习方法的性能最好。所使用的数据来自科英布拉大学医院中心(CHUC)妇科,可以在UCI存储库网站上免费下载。本研究结果表明,带特征选择的SVM算法获得了最好的分类结果,准确率为87.5%,灵敏度为90%,特异性为85%。因此,本研究取得了良好的结果,能够为乳腺癌的检测提供解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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