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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Negative ridge regression parameters for improving the covariance structure of multivariate linear downscaling models
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Negative ridge regression parameters for improving the covariance structure of multivariate linear downscaling models

机译:负脊回归参数,用于改善多元线性缩减模型的协方差结构

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摘要

A downscaling model for multivariate data, e.g. weather elements recorded at multiple sites, should not only be able to fit each of the observed series well, but it should also be able to reproduce observed relationships between the variables. In a linear sense, this means accurately simulating the observed covariance matrix. Multivariate ridge regression with negative ridge parameters is introduced as a means of accomplishing this goal. The procedure is conceptually similar to expanded downscaling: both force the covariance structure of the predictions to match that of observations. Unlike expanded downscaling, an explicit constraint on the covariance matrix is not added to the regression cost function. Instead, regression coefficients are estimated directly via a matrix equation, while ridge parameters, which are free to take positive or negative values, are adjusted iteratively such that the discrepancy between modelled and observed covariance matrices is minimized. Results from multi-site temperature and precipitation data suggest that the proposed method is capable of constraining the predicted covariance matrix to closely match the observed.
机译:多元数据的缩减模型,例如在多个地点记录的天气要素,不仅应该能够很好地拟合每个观测序列,而且还应该能够再现变量之间的观测关系。在线性意义上,这意味着准确模拟观察到的协方差矩阵。引入具有负山脊参数的多元山脊回归作为实现此目标的一种方法。该过程在概念上类似于扩展的按比例缩小:两者都强制预测的协方差结构与观测值的协方差结构匹配。与扩展缩减不同,协方差矩阵的显式约束未添加到回归成本函数。取而代之的是,可以直接通过矩阵方程估算回归系数,而可以自由调整正或负值的岭参数进行迭代调整,以使建模协方差矩阵与观察到的协方差矩阵之间的差异最小。来自多站点温度和降水数据的结果表明,所提出的方法能够约束预测的协方差矩阵以与观测值紧密匹配。

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