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SVM and SVM Ensembles in Breast Cancer Prediction

机译:SVM和SVM集成在乳腺癌预测中的作用

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摘要

Breast cancer is an all too common disease in women, making how to effectively predict it an active research problem. A number of statistical and machine learning techniques have been employed to develop various breast cancer prediction models. Among them, support vector machines (SVM) have been shown to outperform many related techniques. To construct the SVM classifier, it is first necessary to decide the kernel function, and different kernel functions can result in different prediction performance. However, there have been very few studies focused on examining the prediction performances of SVM based on different kernel functions. Moreover, it is unknown whether SVM classifier ensembles which have been proposed to improve the performance of single classifiers can outperform single SVM classifiers in terms of breast cancer prediction. Therefore, the aim of this paper is to fully assess the prediction performance of SVM and SVM ensembles over small and large scale breast cancer datasets. The classification accuracy, ROC, F-measure, and computational times of training SVM and SVM ensembles are compared. The experimental results show that linear kernel based SVM ensembles based on the bagging method and RBF kernel based SVM ensembles with the boosting method can be the better choices for a small scale dataset, where feature selection should be performed in the data pre-processing stage. For a large scale dataset, RBF kernel based SVM ensembles based on boosting perform better than the other classifiers.
机译:乳腺癌是女性中非常常见的疾病,因此如何有效地预测乳腺癌是一个活跃的研究问题。已经采用了许多统计和机器学习技术来开发各种乳腺癌预测模型。其中,支持向量机(SVM)已被证明优于许多相关技术。要构建SVM分类器,首先必须确定内核函数,并且不同的内核函数可能会导致不同的预测性能。但是,很少有研究专注于基于不同内核功能的SVM预测性能。此外,就乳腺癌预测而言,尚不建议提出的用于提高单个分类器性能的SVM分类器组合是否胜过单个SVM分类器。因此,本文的目的是全面评估SVM和SVM集合在小型和大型乳腺癌数据集上的预测性能。比较了训练SVM和SVM集成的分类准确性,ROC,F度量和计算时间。实验结果表明,对于小规模数据集,基于袋装法的线性核SVM集成和采用boosting方法的基于RBF核SVM集成可能是更好的选择,在小规模数据集中,应在数据预处理阶段进行特征选择。对于大型数据集,基于RBF核的基于Boost的SVM集成的性能优于其他分类器。

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