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首页> 外文期刊>International Journal of Applied Mathematics & Statistics >Reduced Support Vector Machine Based on Nonhierarchical Clustering Techniques for Classifying Mixed Large-Scale Datasets
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Reduced Support Vector Machine Based on Nonhierarchical Clustering Techniques for Classifying Mixed Large-Scale Datasets

机译:基于非分层聚类技术的简化支持向量机用于混合大型数据集分类

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摘要

In recent years, the need of big and real time data makes machine learnings and statistics more popular than ever. Healthcare is the most intense in developing intelligent system using big data. Clinical trial simulations make use to provide the virtual patient population. The covariate might be continuous or categorical. The simulation conducted in this study was to accommodate the ideal large scale data according to a certain criteria. Using these data, a modeling method is used to evaluate the 2-classes classification system. The model was constructed from a very well known pattem recognition method named support vector machine. This study applied several clustering methods for reduced support vector machine (RSM) as an alternate in setting training data for constructing classification model.
机译:近年来,对大而实时数据的需求使机器学习和统计数据比以往任何时候都更受欢迎。在使用大数据开发智能系统方面,医疗保健最为密集。临床试验模拟可用于提供虚拟患者群体。协变量可以是连续的或分类的。在这项研究中进行的模拟是根据一定的标准来容纳理想的大规模数据。使用这些数据,可以使用一种建模方法来评估2类分类系统。该模型是通过一种非常知名的模式识别方法(称为支持向量机)构建的。这项研究应用了几种聚类方法来简化支持向量机(RSM),作为建立分类模型的训练数据的替代方法。

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