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ROBUST LEAST SQUARE SUPPORT VECTOR REGRESSION FOR CONTAMINATED DATA MODELING

机译:鲁棒最小二乘支持污染数据建模的向量回归

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Weighted least squares support vector machine (WLSSVM) is a robust version of least squares support vector machine (LS-SVM). It adds weights on error variables to eliminate the influence of outliers. But the weights, which largely depend on the original regression errors from unweighted LS-SVM, might be unreliable for correcting the biased estimation of LS-SVM, especially for the training data set with large deviation outliers. In this paper, a twostage weighting strategy is proposed. This approach derives from the idea of spatial rank of feature vector, and down-weights these large deviation outliers firstly. Then the weights are updated by these regression errors ofWLSSVMwith the weights obtained in the first weighting stage. Finally, WLS-SVM is again employed to further improve the prediction performance. The effectiveness of the proposed robust LS-SVMis validated by two artificial data examples and a soft sensor modeling problem.
机译:加权最小二乘支持向量机(WLSSVM)是最小二乘支持向量机(LS-SVM)的鲁棒版本。它在误差变量上增加了权重,以消除异常值的影响。但是,对于来自未加权的LS-SVM的原始回归误差的重量可能是不可靠的,用于校正LS-SVM的偏置估计,特别是对于具有大偏差异常值的训练数据集。在本文中,提出了一种突变权重策略。这种方法源于特征向量的空间等级的思想,首先是这些大偏差异常值的缩减权重。然后,通过在第一加权阶段中获得的权重WLSSVMwits的回归错误来更新权重。最后,再次采用WLS-SVM来进一步提高预测性能。由两个人工数据示例和软传感器建模问题验证所提出的强大LS-SVMI的有效性。

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