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On Predicting and Analyzing Breast Cancer using Data Mining Approach

机译:用数据挖掘方法预测和分析乳腺癌

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The highest invading cancer among the women is breast cancer. Early detection of breast cancer is the higher chance of the patient being treated. In this study, we have proposed an ensemble method named stacking classifier which combines multiple classification techniques and efficaciously classifies the benign and malignant tumor. “Wisconsin Diagnosis Breast Cancer” dataset culled from the UC Irvine Machine Learning Repository has been used for our experiment. We applied different classification techniques over the dataset and tuned their parameters to improve accuracy. We chose the three best classifiers for our proposed method. Generally, our proposed Stacking classifier combined the results of those best classifiers using meta classifier and provided 97.20% accuracy for breast cancer prediction. Performance of different data mining approaches have been evaluated rigorously through different evaluation metrics.
机译:妇女中侵袭性最高的癌症是乳腺癌。早期发现乳腺癌是治疗患者的更高机会。在这项研究中,我们提出了一种称为堆叠分类器的集成方法,该方法结合了多种分类技术,可以对良性和恶性肿瘤进行有效分类。从UC Irvine机器学习存储库中选出的“威斯康星州诊断乳腺癌”数据集已用于我们的实验。我们对数据集应用了不同的分类技术,并对它们的参数进行了调整,以提高准确性。我们为提出的方法选择了三个最佳分类器。通常,我们提出的Stacking分类器使用meta分类器将那些最佳分类器的结果组合在一起,并为乳腺癌预测提供了97.20%的准确性。通过不同的评估指标对不同数据挖掘方法的性能进行了严格的评估。

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