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冠状病毒大流行期间的政策指导综合数据框架:为经济政策制定者提供实时决策支持。

An integrated data framework for policy guidance during the coronavirus pandemic: Towards real-time decision support for economic policymakers.

机构信息

Department of Economics of Innovation and Industrial Dynamics, ZEW - Leibniz Centre for European Economic Research, Mannheim, Germany.

Department of Econometrics and Statistics, Justus Liebig University Giessen, Gießen, Germany.

出版信息

PLoS One. 2022 Feb 14;17(2):e0263898. doi: 10.1371/journal.pone.0263898. eCollection 2022.

Abstract

Usually, official and survey-based statistics guide policymakers in their choice of response instruments to economic crises. However, in an early phase, after a sudden and unforeseen shock has caused unexpected and fast-changing dynamics, data from traditional statistics are only available with non-negligible time delays. This leaves policymakers uncertain about how to most effectively manage their economic countermeasures to support businesses, especially when they need to respond quickly, as in the COVID-19 pandemic. Given this information deficit, we propose a framework that guided policymakers throughout all stages of this unforeseen economic shock by providing timely and reliable sources of firm-level data as a basis to make informed policy decisions. We do so by combining early stage 'ad hoc' web analyses, 'follow-up' business surveys, and 'retrospective' analyses of firm outcomes. A particular focus of our framework is on assessing the early effects of the pandemic, using highly dynamic and large-scale data from corporate websites. Most notably, we show that textual references to the coronavirus pandemic published on a large sample of company websites and state-of-the-art text analysis methods allowed to capture the heterogeneity of the pandemic's effects at a very early stage and entailed a leading indication on later movements in firm credit ratings. While the proposed framework is specific to the COVID-19 pandemic, the integration of results obtained from real-time online sources in the design of subsequent surveys and their value in forecasting firm-level outcomes typically targeted by policy measures, is a first step towards a more timely and holistic approach for policy guidance in times of economic shocks.

摘要

通常情况下,官方和基于调查的统计数据为政策制定者选择应对经济危机的措施提供指导。然而,在早期阶段,突发且无法预测的冲击会导致预期之外的快速变化,传统统计数据只有在存在不可忽视的时间延迟的情况下才能获得。这使得政策制定者不确定如何最有效地管理其经济对策以支持企业,特别是当他们需要快速做出反应时,例如在 COVID-19 大流行期间。鉴于存在这种信息缺口,我们提出了一个框架,通过提供及时可靠的企业级数据来源,为决策者提供指导,使其能够在所有阶段做出明智的政策决策。我们通过结合早期的“特别”网络分析、“后续”商业调查以及对企业结果的“回溯”分析来实现这一目标。我们的框架特别关注评估大流行病的早期影响,使用来自企业网站的高度动态和大规模数据。值得注意的是,我们展示了文本分析方法可以从大量公司网站上获取有关冠状病毒大流行的文本参考,并在早期阶段捕捉到大流行病影响的异质性,并且对企业信用评级的后续变化具有领先的指示作用。虽然所提出的框架是针对 COVID-19 大流行的,但将实时在线源的结果整合到后续调查的设计中,并在预测通常由政策措施针对的企业层面结果方面具有价值,这是朝着在经济冲击时期提供更及时和全面的政策指导方法迈出的第一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b29/8843231/d981fc230c52/pone.0263898.g001.jpg

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