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New computational methods for classification problems in the existence of outliers based on conic quadratic optimization

机译:基于二次二次优化的离群点存在下分类问题的新计算方法

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摘要

Most of the statistical research involves classification which is a procedure utilized to establish prediction models to set apart and classify new observations in the dataset from every fields of science, technology, and economics. However, these models may give misclassification results when dataset contains outliers (extreme data points). Therefore, we dealt with outliers in classification problem: firstly, by combining robustness of mean-shift outlier model and then stability of Tikhonov regularization based on continuous optimization method called Conic Quadratic Programming. These new methodologies are performed on classification dataset within the existence of outliers, and the results are compared with parametric model by using well-known performance measures.
机译:大多数统计研究都涉及分类,这是一种用于建立预测模型的程序,以对科学,技术和经济学各个领域的新观测值进行分类和分类。但是,当数据集包含异常值(极端数据点)时,这些模型可能会给出错误分类的结果。因此,我们在分类问题中处理离群值:首先,结合均值漂移离群值模型的鲁棒性,然后结合基于连续优化方法(称为圆锥二次规划)的Tikhonov正则化的稳定性。这些新方法在异常值存在的情况下在分类数据集上执行,并使用众所周知的性能指标将结果与参数模型进行比较。

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