Lastunen Jesse, Richiardi Matteo
United Nations University World Institute for Development Economics Research (UNU-WIDER), Helsinki, Finland.
Centre for Microsimulation and Policy Analysis (CeMPA), University of Essex, United Kingdom.
World Dev Perspect. 2023 Jun;30:100503. doi: 10.1016/j.wdp.2023.100503. Epub 2023 Mar 22.
We develop a new methodology to nowcast the effects of the COVID-19 crisis on GDP and forecast its evolution in small, export-oriented countries. To this aim, we exploit variation in financial indexes at the industry level in the early stages of the crisis and relate them to the expected duration of the crisis for each industry, under the assumption that the main shocks to financial prices in 2020 came from COVID-19. Starting from the latest official information available at different stages of the crisis on industry-level trend deviations of GDP, often a few months old, we predict the ensuing recovery trajectories using the most recent financial data available at the time of the prediction. The financial data reflect, among other things, how subsequent waves of infections and information about new vaccines have impacted expectations about the future. We apply our method to Vietnam, one of the most open economies in the world, and obtain predictions that are more optimistic than projections by the International Monetary Fund and other international forecasters, and closer to the realised figures. Our claim is that this better-than-expected performance was visible in stock market data early on but was largely missed by conventional forecasting methods.
我们开发了一种新方法,用于对新冠疫情危机对国内生产总值(GDP)的影响进行即时预测,并对小型外向型国家的经济发展演变进行预测。为此,我们利用危机初期行业层面金融指标的变化,并在假设2020年金融价格的主要冲击来自新冠疫情的前提下,将这些变化与各行业危机的预期持续时间联系起来。从危机不同阶段可获取的有关行业层面GDP趋势偏差的最新官方信息(通常已有几个月历史)出发,我们使用预测时可获取的最新金融数据来预测随后的复苏轨迹。这些金融数据反映了后续感染浪潮以及有关新疫苗的信息如何影响了对未来的预期等情况。我们将我们的方法应用于越南这个世界上最开放的经济体之一,并得到了比国际货币基金组织和其他国际预测机构的预测更为乐观且更接近实际数据的预测结果。我们认为,这种优于预期的表现早在股市数据中就已显现,但传统预测方法大多未能捕捉到。