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首页> 外文期刊>Journal of Climate >Scale-selective ridge regression for multimodel forecasting.
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Scale-selective ridge regression for multimodel forecasting.

机译:比例选择岭回归用于多模型预测。

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This paper proposes a new approach to linearly combining multimodel forecasts, called scale-selective ridge regression, which ensures that the weighting coefficients satisfy certain smoothness constraints. The smoothness constraint reflects the "prior assumption" that seasonally predictable patterns tend to be large scale. In the absence of a smoothness constraint, regression methods typically produce noisy weights and hence noisy predictions. Constraining the weights to be smooth ensures that the multimodel combination is no less smooth than the individual model forecasts. The proposed method is equivalent to minimizing a cost function comprising the familiar mean square error plus a "penalty function" that penalizes weights with large spatial gradients. The method reduces to pointwise ridge regression for a suitable choice of constraint. The method is tested using the Ensemble-Based Predictions of Climate Changes and Their Impacts (ENSEMBLES) hindcast dataset during 1960-2005. The cross-validated skill of the proposed forecast method is shown to be larger than the skill of either ordinary least squares or pointwise ridge regression, although the significance of this difference is difficult to test owing to the small sample size. The model weights derived from the method are much smoother than those obtained from ordinary least squares or pointwise ridge regression. Interestingly, regressions in which the weights are completely independent of space give comparable overall skill. The scale-selective ridge is numerically more intensive than pointwise methods since the solution requires solving equations that couple all grid points together.Digital Object Identifier http://dx.doi.org/10.1175/JCLI-D-13-00030.1
机译:本文提出了一种线性组合多模型预测的新方法,称为尺度选择岭回归,它可以确保加权系数满足某些平滑度约束。平滑度约束反映了“季节性假设”,即季节性可预测的模式倾向于大规模发展。在没有平滑度约束的情况下,回归方法通常会产生噪声权重,因此会产生噪声预测。将权重约束为平滑可确保多模型组合的平滑度不低于单个模型预测的平滑度。所提出的方法等效于最小化包括熟悉的均方误差的成本函数以及“惩罚函数”,该“惩罚函数”对具有大空间梯度的权重进行惩罚。该方法可简化为点状脊回归,以选择合适的约束条件。使用基于集合的1960-2005年间气候变化及其影响的预测(ENSEMBLES)后预报数据集对该方法进行了测试。尽管由于样本量小而难以测试这种差异的显着性,但所提出的预测方法的交叉验证技能显示出比普通最小二乘或点状脊回归的技能更大。从该方法得出的模型权重比从普通最小二乘法或逐点岭回归获得的模型权重平滑得多。有趣的是,权重完全独立于空间的回归具有可比的总体技能。比例选择脊在数字上比点向方法更密集,因为该解决方案需要求解将所有网格点耦合在一起的方程式。数字对象标识符http://dx.doi.org/10.1175/JCLI-D-13-00030.1

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