Impact of coronavirus pandemic on stock index: A polynomial regression with time delay

Motivation: Under contemporary market conditions in China, the stock index has been volatile and highly reflect trends in the coronavirus pandemic, but rare scientific research has been conducted to model the possible nonlinear relations between the two indicators. Added, on the advent that covid-re...

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Main Author: Dong Bowen
Format: Article
Language:English
Published: Elsevier 2024-04-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844024048813
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author Dong Bowen
author_facet Dong Bowen
author_sort Dong Bowen
collection DOAJ
description Motivation: Under contemporary market conditions in China, the stock index has been volatile and highly reflect trends in the coronavirus pandemic, but rare scientific research has been conducted to model the possible nonlinear relations between the two indicators. Added, on the advent that covid-related news in one time period impacts the stock market in another period, time delay can be an equally good predictor of the stock index but rarely investigated. Objectives: To contribute to filling the gaps identified in existing research, this study models relationship between the stock market index and coronavirus pandemic by leveraging volatility in the stock market and covid data through time delay and best degree in a polynomial environment. The resultant optimal time delay and best degree model is used to derive a high-accuracy prediction of stock market index. Novelty: In line with the possible relations, the novelty of this study is that it proposes, validates and implements polynomial regression with time delay to model nonlinear relationship between the stock index and covid. Methods: This study utilizes high-frequency data from January 2020 to the first week of July 2022 to model the nonlinear relationship between the stock index, new covid cases and time delay under polynomial regression environment. Findings: The empirical results show that time delay and new covid cases, when modelled in a polynomial environment with optimal degree and delay, do present better representation of the nonlinear relationship such predictors have with stock index for China. Relative to results from the polynomial regression without delay, the empirical evidence from the model with delay show that an optimal time delay of 17 weeks makes it possible to predict the stock index at high accuracy and record improvements of 16-fold or higher. The representative delay model is used to project for up to 17 weeks for future trends in the stock index. Implication: The implication of the findings herein is that the prowess of the time delay polynomial regression is heavily dependent on instability in covid-related time trends and that researchers and decision-makers should consider modeling to cover for the unsteadiness in coronavirus cases to achieve better results.
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spelling doaj.art-a6fef324d25b41d28138224365a7a0d92024-04-10T04:29:11ZengElsevierHeliyon2405-84402024-04-01107e28850Impact of coronavirus pandemic on stock index: A polynomial regression with time delayDong Bowen0Department of Applied Mathematics, Hong Kong Polytechnic University, 11 Yucai Road, Hung Hom, Hong Kong, Kowloon, ChinaMotivation: Under contemporary market conditions in China, the stock index has been volatile and highly reflect trends in the coronavirus pandemic, but rare scientific research has been conducted to model the possible nonlinear relations between the two indicators. Added, on the advent that covid-related news in one time period impacts the stock market in another period, time delay can be an equally good predictor of the stock index but rarely investigated. Objectives: To contribute to filling the gaps identified in existing research, this study models relationship between the stock market index and coronavirus pandemic by leveraging volatility in the stock market and covid data through time delay and best degree in a polynomial environment. The resultant optimal time delay and best degree model is used to derive a high-accuracy prediction of stock market index. Novelty: In line with the possible relations, the novelty of this study is that it proposes, validates and implements polynomial regression with time delay to model nonlinear relationship between the stock index and covid. Methods: This study utilizes high-frequency data from January 2020 to the first week of July 2022 to model the nonlinear relationship between the stock index, new covid cases and time delay under polynomial regression environment. Findings: The empirical results show that time delay and new covid cases, when modelled in a polynomial environment with optimal degree and delay, do present better representation of the nonlinear relationship such predictors have with stock index for China. Relative to results from the polynomial regression without delay, the empirical evidence from the model with delay show that an optimal time delay of 17 weeks makes it possible to predict the stock index at high accuracy and record improvements of 16-fold or higher. The representative delay model is used to project for up to 17 weeks for future trends in the stock index. Implication: The implication of the findings herein is that the prowess of the time delay polynomial regression is heavily dependent on instability in covid-related time trends and that researchers and decision-makers should consider modeling to cover for the unsteadiness in coronavirus cases to achieve better results.http://www.sciencedirect.com/science/article/pii/S2405844024048813Coronavirus pandemicHigh-frequency dataStock indexPolynomial regressionTime delayForecasting
spellingShingle Dong Bowen
Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
Heliyon
Coronavirus pandemic
High-frequency data
Stock index
Polynomial regression
Time delay
Forecasting
title Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
title_full Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
title_fullStr Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
title_full_unstemmed Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
title_short Impact of coronavirus pandemic on stock index: A polynomial regression with time delay
title_sort impact of coronavirus pandemic on stock index a polynomial regression with time delay
topic Coronavirus pandemic
High-frequency data
Stock index
Polynomial regression
Time delay
Forecasting
url http://www.sciencedirect.com/science/article/pii/S2405844024048813
work_keys_str_mv AT dongbowen impactofcoronaviruspandemiconstockindexapolynomialregressionwithtimedelay