Econometrics for Modelling Climate Change

Jennifer L. Castle, D. Hendry
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引用次数: 7

Abstract

Shared features of economic and climate time series imply that tools for empirically modeling nonstationary economic outcomes are also appropriate for studying many aspects of observational climate-change data. Greenhouse gas emissions, such as carbon dioxide, nitrous oxide, and methane, are a major cause of climate change as they cumulate in the atmosphere and reradiate the sun’s energy. As these emissions are currently mainly due to economic activity, economic and climate time series have commonalities, including considerable inertia, stochastic trends, and distributional shifts, and hence the same econometric modeling approaches can be applied to analyze both phenomena. Moreover, both disciplines lack complete knowledge of their respective data-generating processes (DGPs), so model search retaining viable theory but allowing for shifting distributions is important. Reliable modeling of both climate and economic-related time series requires finding an unknown DGP (or close approximation thereto) to represent multivariate evolving processes subject to abrupt shifts. Consequently, to ensure that DGP is nested within a much larger set of candidate determinants, model formulations to search over should comprise all potentially relevant variables, their dynamics, indicators for perturbing outliers, shifts, trend breaks, and nonlinear functions, while retaining well-established theoretical insights. Econometric modeling of climate-change data requires a sufficiently general model selection approach to handle all these aspects. Machine learning with multipath block searches commencing from very general specifications, usually with more candidate explanatory variables than observations, to discover well-specified and undominated models of the nonstationary processes under analysis, offers a rigorous route to analyzing such complex data. To do so requires applying appropriate indicator saturation estimators (ISEs), a class that includes impulse indicators for outliers, step indicators for location shifts, multiplicative indicators for parameter changes, and trend indicators for trend breaks. All ISEs entail more candidate variables than observations, often by a large margin when implementing combinations, yet can detect the impacts of shifts and policy interventions to avoid nonconstant parameters in models, as well as improve forecasts. To characterize nonstationary observational data, one must handle all substantively relevant features jointly: A failure to do so leads to nonconstant and mis-specified models and hence incorrect theory evaluation and policy analyses.
模拟气候变化的计量经济学
经济和气候时间序列的共同特征意味着,对非平稳经济结果进行经验建模的工具也适用于研究观测气候变化数据的许多方面。温室气体的排放,如二氧化碳、一氧化二氮和甲烷,是气候变化的主要原因,因为它们在大气中积聚并辐射太阳的能量。由于这些排放目前主要是由经济活动造成的,经济和气候时间序列具有共性,包括相当大的惯性、随机趋势和分布变化,因此可以采用相同的计量经济学建模方法来分析这两种现象。此外,这两个学科都缺乏各自数据生成过程的完整知识,因此模型搜索保留可行的理论,但允许移动分布是重要的。对气候和经济相关时间序列的可靠建模需要找到一个未知的DGP(或其近似值)来表示受突变影响的多变量演化过程。因此,为了确保DGP嵌套在更大的候选决定因素集合中,要搜索的模型公式应包含所有潜在的相关变量、它们的动态、干扰异常值的指标、位移、趋势中断和非线性函数,同时保留完善的理论见解。气候变化数据的计量经济建模需要一个足够通用的模型选择方法来处理所有这些方面。机器学习采用多路径块搜索,从非常一般的规范开始,通常具有比观测更多的候选解释变量,以发现分析中的非平稳过程的良好指定和非受控模型,为分析此类复杂数据提供了严格的途径。要做到这一点,需要应用适当的指示器饱和估计器(ISEs),该类包括异常值的脉冲指示器,位置移动的步进指示器,参数变化的乘法指示器和趋势中断的趋势指示器。所有的ise都比观测值包含更多的候选变量,在实施组合时通常会有很大的差距,但可以检测到变化和政策干预的影响,以避免模型中的非恒定参数,并改进预测。为了描述非平稳观测数据,必须联合处理所有实质性相关的特征:如果做不到这一点,就会导致非恒定和错误指定的模型,从而导致不正确的理论评估和政策分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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