Climate change impact studies inform policymakers on the estimated damages of future climate change on economic, health and other outcomes. In most studies, an annual outcome variable is observed, e.g. agricultural yield, along with a higher-frequency regressor, e.g. daily temperature. Applied researchers then face a problem of selecting a model to characterize the nonlinear relationship between the outcome and the high-frequency regressor to make a policy recommendation based on the model-implied damage function. We show that existing model selection criteria are only suitable for the policy objective if one of the models under consideration nests the true model. If all models are seen as imperfect approximations to the true nonlinear relationship, the model that performs well in the normal climate conditions is not guaranteed to perform well at the projected climate that is different from the historical norm. We therefore propose a new criterion, the proximity-weighted mean-squared error (PWMSE), that directly targets precision of the damage function at the projected future climate. To make this criterion feasible, we assign higher weights to prior years that can serve as weather analogs to the projected future climate when evaluating competing models using the PWMSE. We show that our approach selects the best approximate regression model that has the smallest weighted error of predicted impacts for a projected future climate. A simulation study and an application revisiting the impact of climate change on agricultural production illustrate the empirical relevance of our theoretical analysis.
翻译:气候变化影响研究向政策制定者提供未来气候变化对经济、健康和其他结果的估计损失。在大多数研究中,观察到年度结果变量,例如农业产量,以及更高频率的回归变量,例如每日气温。应用研究人员随后面临一个问题,即选择一个模型来描述结果和高频率回归变量之间的非线性关系,以基于模型所暗示的损失函数进行政策建议。我们表明,现有的模型选择标准仅在所考虑模型中有一个模型嵌套真实模型时适用于政策目标。如果所有模型都被视为对真实非线性关系的不完美近似,那么在正常气候条件下表现良好的模型不保证在与历史规律不同的预期气候下表现良好。因此,我们提出了一个新的标准:接近加权均方误差(PWMSE),直接针对预期未来气候下损失函数的精度。为了使该标准可行,我们在评估使用PWMSE的竞争模型时,将更高的权重分配给可以作为预期未来气候的天气类似物的先前年份。我们表明,我们的方法选择最佳近似回归模型,其在预期未来气候下具有最小的加权预测影响误差。一个模拟研究和一个再次审查气候变化对农业生产的影响的应用说明了我们理论分析的实证重要性。