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首页> 外文期刊>Climatic Change >Identification of linear relationships from noisy data using errors-in-variables models—relevance for reconstruction of past climate from tree-ring and other proxy information
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Identification of linear relationships from noisy data using errors-in-variables models—relevance for reconstruction of past climate from tree-ring and other proxy information

机译:使用变量误差模型从嘈杂的数据中识别线性​​关系-从树环和其他代理信息重建过去气候的相关性

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摘要

Reliable paleoclimate reconstructions are needed to assess if the recent climatic changes are unusual compared to pre-industrial climate variability. Here, we focus on one important problem in climate reconstructions: Transfer functions relating proxies (predictors) and target climatic quantities (predictands) can be seriously biased when predictand and predictor noise is not adequately accounted for, resulting in biased amplitudes of reconstructed climatic time series. We argue for errors-in-variables models (EVM) for unbiased identification of linear structural relationships between noisy proxies and target climatic quantities by (1) introducing underlying statistical concepts and (2) demonstrating the potential biases of using the EVM approach, the most commonly used direct ordinary least squares (OLS) regression, inverse OLS regression, or the reduced major axis method (‘variance matching’) with a simulation example of artificial noise-disturbed sinusoidal time series. We then develop an alternative strategy for paleoclimate reconstruction from tree-ring and other proxy data, explicitly accounting for the identified problem.
机译:需要可靠的古气候重建来评估与工业化之前的气候变化相比,近期的气候变化是否异常。在此,我们着重讨论气候重建中的一个重要问题:当未充分考虑预测和预测噪声时,可能严重偏移与代理(预测因子)和目标气候量(预测因子)相关的传递函数,从而导致重建气候时间序列的振幅出现偏差。 。我们主张通过变量误差模型(EVM)来无偏识别噪声代理与目标气候量之间的线性结构关系,方法是:(1)引入基本的统计概念,(2)证明使用EVM方法的潜在偏差,常用的直接普通最小二乘(OLS)回归,OLS逆向回归或简化的主轴方法(“方差匹配”)以及人工噪声扰动正弦时间序列的模拟示例。然后,我们从树年轮和其他代理数据中开发出古气候重建的替代策略,明确解决了所识别的问题。

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