Automatic Locally Stationary Time Series Forecasting with application to predicting U.K. Gross Value Added Time Series under sudden shocks caused by the COVID pandemic

03/14/2023
by   Rebecca Killick, et al.
0

Accurate forecasting of the U.K. gross value added (GVA) is fundamental for measuring the growth of the U.K. economy. A common nonstationarity in GVA data, such as the ABML series, is its increase in variance over time due to inflation. Transformed or inflation-adjusted series can still be challenging for classical stationarity-assuming forecasters. We adopt a different approach that works directly with the GVA series by advancing recent forecasting methods for locally stationary time series. Our approach results in more accurate and reliable forecasts, and continues to work well even when the ABML series becomes highly variable during the COVID pandemic.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2021

Modeling Nonstationary Time Series using Locally Stationary Basis Processes

Methods of estimation and forecasting for stationary models are well kno...
research
08/26/2020

An exploratory time series analysis of total deaths per month in Brazil since 2015

In this article, we investigate the historical series of the total numbe...
research
04/15/2021

Bayesian Synthetic Likelihood Estimation for Underreported Non-Stationary Time Series: Covid-19 Incidence in Spain

The problem of dealing with misreported data is very common in a wide ra...
research
10/25/2020

Inter-Series Attention Model for COVID-19 Forecasting

COVID-19 pandemic has an unprecedented impact all over the world since e...
research
07/03/2022

Linguistic Approach to Time Series Forecasting

This paper proposes methods of predicting dynamic time series (including...
research
08/13/2020

A Rolling Optimized Nonlinear Grey Bernoulli Model RONGBM(1,1) and application in predicting total COVID-19 infected cases

The Nonlinear Grey Bernoulli Model NGBM(1, 1) is a recently developed gr...

Please sign up or login with your details

Forgot password? Click here to reset