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Asymmetrical Interval Regression Using Extended E-svm Withrobust Algorithm

机译:基于扩展E-svm鲁棒算法的非对称区间回归

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摘要

In an asymmetrical interval data set, the error ranges of the upper and lower interval ends are different. This situation is common in practice because of the usual presence of uncertain influences. In prior "crisp input and interval output" regression analysis, a crude symmetrical estimation is obtained, and the asymmetrical character of training data cannot be depicted exactly. In this paper, an asymmetrical interval data analysis is proposed for the first time. The two interval ends are studied independently, and a set of regression models and e-insensitive functions are proposed to strengthen the description of the interval ends. The support vector machine (SVM) is imported into this approach (for its model-free character in nonlinear regression) and further extended by £-insensitive functions to the extended e-SVM. A robust algorithm is presented to eliminate the effect of outliers. Experiments are then presented to verify the quality of performance of the extended e-SVM. Advantages over other approaches are considered in the conclusion.
机译:在非对称间隔数据集中,上下间隔末端的误差范围是不同的。由于通常存在不确定的影响,因此这种情况在实践中很常见。在先前的“酥脆输入和间隔输出”回归分析中,获得了粗略的对称估计,并且无法准确地描述训练数据的不对称特征。本文首次提出了非对称区间数据分析方法。独立研究了两个区间末端,并提出了一套回归模型和对电子不敏感的函数来加强对区间末端的描述。支持向量机(SVM)被导入到该方法中(由于其在非线性回归中的无模型特性),并通过in不敏感函数进一步扩展到扩展的e-SVM。提出了一种鲁棒的算法来消除离群值的影响。然后提出实验以验证扩展e-SVM的性能质量。结论中考虑了相对于其他方法的优势。

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