Corvinus
Corvinus

Analysis of the performance of predictive models during Covid-19 and the Russian-Ukrainian war

Vancsura, László and Bareith, Tibor (2023) Analysis of the performance of predictive models during Covid-19 and the Russian-Ukrainian war. Public Finance Quarterly = Pénzügyi Szemle, 69 (2). pp. 118-132. DOI https://doi.org/10.35551/PFQ_2023_2_7

[img]
Preview
PDF - Requires a PDF viewer such as GSview, Xpdf or Adobe Acrobat Reader
362kB

Official URL: https://doi.org/10.35551/PFQ_2023_2_7


Abstract

In our paper, we investigate how effectively artificial intelligence can be used to predict stock market trends in the world’s leading equity markets over the period 01/01/2010 to 09/16/2022. Covid-19 and the Russian-Ukrainian war have had a strong impact on the capital markets and therefore the study was conducted in a highly volatile environment. The analysis was performed on three time intervals, using two machine learning algorithms of different complexity (decision tree, LSTM) and a parametric statistical model (linear regression). The evaluation of the results obtained was based on mean absolute percentage error (MAPE). In our study, we show that predictive models can perform better than linear regression in the period of high volatility. Another important finding is that the predictive models performed better in the post-Russian-Ukrainian war period than after the outbreak of Covid-19. Stock market price forecasting can play an important role in fundamental and technical analysis, can be incorporated into the decision criteria of algorithmic trading, or can be used on its own to automate trading.

Item Type:Article
Uncontrolled Keywords:COVID-19, Russian-Ukrainian war, stock market price forecast, artificial intelligence, predictive algorithms
JEL classification:C45 - Neural Networks and Related Topics
C53 - Forecasting Models; Simulation Methods
G11 - Portfolio Choice; Investment Decisions
G17 - Financial Forecasting and Simulation
Subjects:Finance
DOI:https://doi.org/10.35551/PFQ_2023_2_7
ID Code:8457
Deposited By: Alexa Horváth
Deposited On:28 Jul 2023 06:35
Last Modified:28 Jul 2023 06:35

Repository Staff Only: item control page

Downloads

Downloads per month over past year

View more statistics