生产者价格通胀连通性和投入产出网络

Nuriye Melisa Bilgin, K. Yilmaz
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引用次数: 5

摘要

本文采用Diebold-Yilmaz连通性指数框架,充分利用向量自回归广义方差分解中的信息,分析了1947年至2018年美国制造业通胀冲击中的生产者价格传导。研究结果表明,投入产出网络格兰杰的全系统连通性导致了产业间生产者价格通胀的连通性。投入产出网络和通胀连通性关系在主要供给侧冲击期间更为强劲,如全球石油和金属价格上涨,而在总需求冲击期间较弱,如1981-84年沃尔克反通胀和2008年大衰退。这些发现与Acemoglu等人(2016)的猜想是一致的,即供应冲击是向下游传播的,而需求冲击是向上游传播的。最后,初步结果显示,特朗普关税导致2018年上半年全系统通胀连通性上升,原因是主要来自关税目标行业(即基本金属、制成品金属和机械)的冲击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Producer Price Inflation Connectedness and Input-Output Networks
We analyze the transmission of producer price in inflation shocks across the U.S. manufacturing industries from 1947 to 2018 using the Diebold-Yilmaz Connectedness Index framework, which fully utilizes the information in generalized variance decompositions from vector autoregressions. The results show that the system-wide connectedness of the input-output network Granger-causes the producer price inflation connectedness across industries. The input-output network and the inflation connectedness nexus is stronger during periods of major supply-side shocks, such as the global oil and metal price hikes, and weaker during periods of aggregate demand shocks, such as the Volcker disinflation of 1981-84 and the Great Recession of 2008. These findings are consistent with Acemoglu et al. (2016)'s conjecture that supply shocks are transmitted downstream, whereas demand shocks are transmitted upstream. Finally, preliminary results show that Trump tariffs caused an increase in the system-wide inflation connectedness in the first half of 2018, due to shocks mostly transmitted from tariff-targeted industries, namely, basic metals, fabricated metals and machinery.
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