Climate risks and forecastability of the weekly state-level economic conditions of the United States

IF 1.8 4区 经济学 Q2 BUSINESS, FINANCE
Oguzhan Cepni, Rangan Gupta, Wenting Liao, Jun Ma
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引用次数: 0

Abstract

In this paper, we first utilize a dynamic factor model with stochastic volatility (DFM-SV) to filter out the national factor from the local components of weekly state-level economic conditions indexes of the United States (US) over the period of April 1987 to August 2021. In the second step, we forecast the state-level factors in a panel data set-up based on the information content of corresponding state-level climate risks, as proxied by changes in temperature and its SV. The forecasting experiment depicts statistically significant evidence of out-of-sample predictability over a one-month- to one-year-ahead horizon, with stronger forecasting gains derived for states that do not believe that climate change is happening and are Republican. We also find evidence of national climate risks in accurately forecasting the national factor of economic conditions. Our analyses have important policy implications from a regional perspective.

气候风险和美国每周州一级经济状况的可预测性
在本文中,我们首先利用具有随机波动率的动态因子模型(DFM‐SV)从1987年4月至2021年8月期间美国(US)每周州一级经济状况指数的地方成分中过滤出国家因素。在第二步中,我们根据相应的状态气候风险的信息含量,在面板数据集中预测状态因子,以温度及其SV变化为代表。预测实验描述了一个月到一年的样本外可预测性的统计显著证据,对不相信气候变化正在发生的共和党州的预测收益更强。在对国家经济状况因子的准确预测中也发现了国家气候风险的证据。从区域角度来看,我们的分析具有重要的政策意义。
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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来源期刊
International Review of Finance
International Review of Finance BUSINESS, FINANCE-
CiteScore
3.30
自引率
5.90%
发文量
28
期刊介绍: The International Review of Finance (IRF) publishes high-quality research on all aspects of financial economics, including traditional areas such as asset pricing, corporate finance, market microstructure, financial intermediation and regulation, financial econometrics, financial engineering and risk management, as well as new areas such as markets and institutions of emerging market economies, especially those in the Asia-Pacific region. In addition, the Letters Section in IRF is a premium outlet of letter-length research in all fields of finance. The length of the articles in the Letters Section is limited to a maximum of eight journal pages.
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