A Novel Ensemble of Support Vector Machines for Improving Medical Data Classification

Phuoc-Hai Huynh, Van Hoa Nguyen
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引用次数: 1

Abstract

In recent years, the increasing volume and availability of healthcare and biomedical data are opening up new opportunities for computational methods to enhance healthcare in many hospitals. Medical data classification is regarded as the challenging task to develop intelligent medical decision support systems in hospitals. In this paper, the ensemble approaches based on support vector machines are proposed for classifying medical data. This research’s key contribution is that the ensemble multiple support vector machines use the function kernel in the style of gradient boosting and bagging to produce a more accurate fusion model than the mono-modality models. Extensive experiments have been conducted on forty benchmark medical datasets from the University of California at Irvine machine learning repository. The classification results show that there is a statistically significant difference (p-values < 0.05) between the proposed approaches and the best classification models. In addition, the empirical analysis of forty medical datasets indicated that our models can predict diseases with an accuracy rate of 82.82 and 81.76 percent without feature selection in the preprocessing data stage.
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一种改进医疗数据分类的新型支持向量机集成
近年来,医疗保健和生物医学数据的数量和可用性不断增加,为计算方法在许多医院中增强医疗保健提供了新的机会。医疗数据分类是医院智能医疗决策支持系统开发的难点之一。本文提出了基于支持向量机的集成方法用于医学数据分类。本研究的关键贡献在于集成多支持向量机使用梯度提升和bagging方式的函数核来产生比单模态模型更精确的融合模型。在加州大学欧文分校机器学习存储库的40个基准医疗数据集上进行了广泛的实验。分类结果表明,本文提出的方法与最佳分类模型之间存在显著的统计学差异(p值< 0.05)。此外,对40个医疗数据集的实证分析表明,在预处理数据阶段不进行特征选择的情况下,我们的模型预测疾病的准确率分别为82.82%和81.76%。
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