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Fuzzy robust regression analysis based on a hyperelliptic function

机译:基于超椭圆​​函数的模糊鲁棒回归分析

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Since a fuzzy linear regression model was proposed in 1987, its possibilistic model is employed to analyze data in various fields. From viewpoints of fuzzy linear regression, data are interpreted to express the possibilities of a latent system. Therefore, when data have error or samples are irregular, the obtained regression model has unnaturally too wide possibility range. In this paper we propose a fuzzy robust linear regression model which is not influenced by data with error. Especially a hyperelliptic function is employed to select focal samples which may have a large error or be irregular so that the number of combinatorial calculations can be reduced to a great extent. The model is built to minimize the total error between the model and the data. The robustness of the model is shown using numerical examples.
机译:自从1987年提出模糊线性回归模型以来,它的可能性模型就被用来分析各个领域的数据。从模糊线性回归的观点来看,数据被解释为表达潜在系统的可能性。因此,当数据有误差或样本不规则时,所获得的回归模型具有不自然的太宽的可能性范围。在本文中,我们提出了一个不受数据误差影响的模糊鲁棒线性回归模型。特别地,使用超椭圆函数来选择可能具有大误差或不规则的焦点样本,从而可以极大地减少组合计算的次数。建立模型是为了最大程度地减少模型和数据之间的总误差。使用数值示例来显示模型的鲁棒性。

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