A comparative study of decision tree and support vector machine for breast cancer prediction

Matthew Idakwo Ogbe, Christian Chukwuemeka Nzeanorue, Raphael Aduramimo Olusola, Daniel Oluwafemi Olofin, Moyosore Celestina Owoeye, Ewemade Cornelius Enabulele, Adeoluwa Perpetual Ibijola, Chioma Jessica Ifechukwu, Olanipekun Ibrahim Ayo
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Abstract

Breast cancer remains a leading cause of mortality among women globally, necessitating accurate and early diagnosis techniques. This study explores the effectiveness of Support Vector Machine (SVM) techniques for diagnosing breast cancer, utilizing the Object-Oriented Analysis and Design Method (OOADM) for system development. The research employed the Wisconsin Breast Cancer Dataset from the UCI Machine Learning Repository, comprising ten features. The dataset was divided into 80% for training and 20% for testing the SVM model. Performance metrics such as classification accuracy, Area Under the Curve (AUC), sensitivity, specificity, and precision were used to evaluate the SVM model, which was also compared against a Decision Tree (DT) model. The results indicated that the SVM model achieved superior performance with an accuracy of 94%, AUC of 98%, sensitivity of 95%, specificity of 87%, and precision of 93%. In comparison, the DT model showed an accuracy of 89%, AUC of 95%, sensitivity of 90%, specificity of 85%, and precision of 90%. The findings underscore the potential of SVM in enhancing breast cancer diagnostic accuracy, thereby supporting early detection and treatment.
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决策树与支持向量机在乳腺癌预测方面的比较研究
乳腺癌仍然是全球妇女死亡的主要原因,因此需要准确和早期的诊断技术。本研究利用面向对象的分析和设计方法(OOADM)进行系统开发,探索支持向量机(SVM)技术在诊断乳腺癌方面的有效性。研究采用了 UCI 机器学习资料库中的威斯康星乳腺癌数据集,该数据集由十个特征组成。数据集的 80% 用于训练 SVM 模型,20% 用于测试。使用分类准确率、曲线下面积(AUC)、灵敏度、特异性和精确度等性能指标来评估 SVM 模型,并将其与决策树(DT)模型进行比较。结果表明,SVM 模型的准确率为 94%,AUC 为 98%,灵敏度为 95%,特异度为 87%,精确度为 93%,性能优越。相比之下,DT 模型的准确率为 89%,AUC 为 95%,灵敏度为 90%,特异度为 85%,精确度为 90%。研究结果凸显了 SVM 在提高乳腺癌诊断准确性方面的潜力,从而支持早期检测和治疗。
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