纳森和魏对《关于COVID-19大流行统计方面的第一次讨论会议》的回应

Nason and Wei's reply to the Discussion of ‘The First Discussion Meeting on Statistical Aspects of the Covid-19 Pandemic’

Journal of the Royal Statistical Society. Series A: Statistics in Society · 2022
被引 0
ABS 3

中文导读

该文使用基于贸易网络的广义网络自回归模型,预测多国采购经理指数,并纳入疫情管控严格度和死亡率等变量,发现该模型比传统向量自回归模型预测误差更小。

Abstract

Knowledge of the current state of economies, how they respond to COVID-19 mitigations and indicators, and what the future might hold for them is important. We use recently developed generalised network autoregressive (GNAR) models, using trade-determined networks, to model and forecast the Purchasing Managers' Indices for a number of countries. We use networks that link countries where the links themselves, or their weights, are determined by the degree of export trade between the countries. We extend these models to include node-specific time series exogenous variables (GNARX models), using this to incorporate COVID-19 mitigation stringency indices and COVID-19 death rates into our analysis. The highly parsimonious GNAR models considerably outperform vector autoregressive models in terms of mean-squared forecasting error and our GNARX models themselves outperform

经济学统计学流行病学国际贸易