Predicting the Economic Impact of the COVID-19 Pandemic in the United Kingdom Using Time-Series Mining

Rakha, Ahmed and Hettiarachchi, Hansi and Rady, Dina and Gaber, Mohamed Medhat and Rakha, Emad and Abdelsamea, Mohammed M. (2021) Predicting the Economic Impact of the COVID-19 Pandemic in the United Kingdom Using Time-Series Mining. Economies, 9 (4). p. 137. ISSN 2227-7099

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Abstract

The COVID-19 pandemic has brought economic activity to a near standstill as many countries imposed very strict restrictions on movement to halt the spread of the virus. This study aims at assessing the economic impacts of COVID-19 in the United Kingdom (UK) using artificial intelligence (AI) and data from previous economic crises to predict future economic impacts. The macroeconomic indicators, gross domestic products (GDP) and GDP growth, and data on the performance of three primary industries in the UK (the construction, production and service industries) were analysed using a comparison with the pattern of previous economic crises. In this research, we experimented with the effectiveness of both continuous and categorical time-series forecasting on predicting future values to generate more accurate and useful results in the economic domain. Continuous value predictions indicate that GDP growth in 2021 will remain steady, but at around −8.5% contraction, compared to the baseline figures before the pandemic. Further, the categorical predictions indicate that there will be no quarterly drop in GDP following the first quarter of 2021. This study provided evidence-based data on the economic effects of COVID-19 that can be used to plan necessary recovery procedures and to take appropriate actions to support the economy.

Item Type: Article
Subjects: Opene Prints > Multidisciplinary
Depositing User: Managing Editor
Date Deposited: 30 Jun 2023 04:29
Last Modified: 16 Oct 2023 03:52
URI: http://geographical.go2journals.com/id/eprint/2240

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