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A Methodology for Robust Multiproxy Paleoclimate Reconstructions and Modeling of Temperature Conditional Quantiles

机译:温度条件分位数的鲁棒多代理古气候重构和建模方法

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Great strides have been made in the field of reconstructing past temperatures based on models relating temperature to temperature-sensitive paleoclimate proxies. One of the goals of such reconstructions is to assess if current climate is anomalous in a millennial context. These regression-based approaches model the conditional mean of the temperature distribution as a function of paleoclimate proxies (or vice versa). Some of the recent focus in the area has considered methods that help reduce the uncertainty inherent in such statistical paleoclimate reconstructions, with the ultimate goal of improving the confidence that can be attached to such endeavors. A second important scientific focus in the subject area is the area of forward models for proxies, the goal of which is to understand the way paleoclimate proxies are driven by temperature and other environmental variables. One of the primary contributions of this article is novel statistical methodology for (ⅰ) quantile regression (QR) with autoregressive residual structure, (ⅱ) estimation of corresponding model parameters, (ⅲ) development of a rigorous framework for specifying uncertainty estimates of quantities of interest, yielding (ⅳ) statistical byproducts that address the two scientific foci discussed above. We show that by using the above statistical methodology, we can demonstrably produce a more robust reconstruction than is possible by using conditional-mean-fitting methods. Our reconstruction shares some of the common features of past reconstructions, but we also gain useful insights. More importantly, we are able to demonstrate a significantly smaller uncertainty than that from previous regression methods. In addition, the QR component allows us to model, in a more complete and flexible way than least squares, the conditional distribution of temperature given proxies. This relationship can be used to inform forward models relating how proxies are driven by temperature.
机译:在将温度与温度敏感的古气候代理相关的模型的基础上,重建过去的温度领域取得了长足的进步。此类重建的目标之一是评估在千年背景下当前的气候是否异常。这些基于回归的方法将温度分布的条件平均值建模为古气候代理的函数(反之亦然)。该领域最近的一些关注点已经考虑了有助于减少这种统计上的古气候重构所固有的不确定性的方法,其最终目标是提高这种努力所能带来的信心。主题领域的第二个重要科学重点是代理的正向模型领域,其目标是了解温度和其他环境变量驱动古气候代理的方式。本文的主要贡献之一是新颖的统计方法,可用于(residual)具有自回归残差结构的分位数回归(QR),(ⅱ)估计相应模型参数,(ⅲ)建立严格的框架以指定不确定量的不确定性估计兴趣,产生(ⅳ)统计副产品,以解决上述两个科学焦点。我们表明,通过使用上述统计方法,可以证明我们比使用条件均值拟合方法可以产生更强大的重构。我们的重建具有过去重建的一些共同特征,但我们也获得了有益的见解。更重要的是,与以前的回归方法相比,我们能够证明不确定性要小得多。另外,QR组件使我们能够以比最小二乘法更完整,更灵活的方式对给定代理的温度条件分布进行建模。该关系可用于通知有关温度如何驱动代理的正向模型。

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