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Recession fears and stock markets: an application of directional wavelet coherence and a machine learning-based economic agent-determined Google fear index.

Szczygielski, Jan Jakub; Charteris, Ailie; Obojska, Lidia; Brzeszczyński, Janusz

Authors

Jan Jakub Szczygielski

Ailie Charteris

Lidia Obojska

Janusz Brzeszczyński



Abstract

Recession fears play a pivotal role in investment decision-making and policy development aimed at reducing the likelihood of a recession and managing its impact. Using machine learning, we develop an economic agent-determined daily recession fear index using Google searches that isolates recession-related fears from overall stock market uncertainty. We study the evolving impact of recent recession fears on stock markets using directional wavelet analysis that distinguishes between positive and negative associations. Recession fears negatively impact world and G7 stock markets and trigger heightened volatility, with Japan being the most resilient. Monetary policy tightening in response to record inflation levels significantly contributes to persistent recession fears, suggesting that policymakers should consider co-ordinating responses to avoid an excessive global economic slowdown. Our methodology offers a high frequency monitoring tool that can be applied to analyse evolving relationships between variables and can be generalised to study the influence of specific events on financial markets by isolating topic-specific components from general proxies for uncertainty, attention or sentiment.

Citation

SZCZYGIELSKI, J.J., CHARTERIS, A., OBOJSKA, L. and BRZESZCZYŃSKI, J. 2024. Recession fears and stock markets: an application of directional wavelet coherence and a machine learning-based economic agent-determined Google fear index. Research in international business and finance [online], 72(part A), article number 102448. Available from: https://doi.org/10.1016/j.ribaf.2024.102448

Journal Article Type Article
Acceptance Date Jun 9, 2024
Online Publication Date Jun 14, 2024
Publication Date Oct 31, 2024
Deposit Date Jun 25, 2024
Publicly Available Date Jun 15, 2025
Journal Research in international business and finance
Print ISSN 0275-5319
Electronic ISSN 1878-3384
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 72
Issue Part A
Article Number 102448
DOI https://doi.org/10.1016/j.ribaf.2024.102448
Keywords Recession fears; Uncertainty; Elastic net regression; Machine learning; Google search; Directional wavelet analysis
Public URL https://rgu-repository.worktribe.com/output/2382448
Additional Information This article has been published with separate supporting information. This supporting information has been incorporated into a single file on this repository and can be found at the end of the file associated with this output.

Files

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