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Modified Support Vector Regression in outlier detection

机译:异常检测中的修正支持向量回归

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摘要

In order to construct approximation functions on real-life data, it is necessary to remove outliers from the measured raw data before modeling. Although the standard Support Vector Regression based outlier detection methods for non-linear function with multidimensional input have achieved good performance, they have practical issues in computational costs and parameter adjustment. In this paper we propose a practical approach to outlier detection using modified SVR, which reduces computational cost and defines outlier threshold appropriately. We apply this method to both test and industrial data sets for validation.
机译:为了在现实生活的数据上构建近似函数,有必要在建模之前从测量的原始数据中删除离群值。尽管基于标准支持向量回归的具有多维输入的非线性函数的离群值检测方法已经取得了良好的性能,但是它们在计算成本和参数调整方面存在实际问题。在本文中,我们提出了一种使用改进的SVR进行离群值检测的实用方法,该方法可降低计算成本并适当定义离群值阈值。我们将此方法应用于测试和工业数据集以进行验证。

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