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Co-Bubble transmission across clean and dirty Cryptocurrencies: Network and portfolio analysis

•Study co-bubbles using a network model from May 15, 2018 to June 15, 2023.•The co-bubble network experiences notable changes around crisis events.•The transmission of co-bubble influence exhibits time-varying characteristics.•Different patterns of co-bubble transmission exist for dirty and clean gr...

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Bibliographic Details
Published in:Journal of international money and finance 2024-07, Vol.145, p.103108, Article 103108
Main Authors: Chen, Yan, Zhang, Lei, Bouri, Elie
Format: Article
Language:English
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Summary:•Study co-bubbles using a network model from May 15, 2018 to June 15, 2023.•The co-bubble network experiences notable changes around crisis events.•The transmission of co-bubble influence exhibits time-varying characteristics.•Different patterns of co-bubble transmission exist for dirty and clean groups.•Portfolios constructed based on the co-bubble network beat the baseline strategy. This study proposes a co-bubble network to capture the transmission of co-bubbles across the prices of 37 cryptocurrencies from both static and dynamic perspectives. It considers the periods of the COVID-19 pandemic and the Russo-Ukrainian conflict, and distinguishes clean from dirty cryptocurrencies. The main findings are summarized as follows: Firstly, larger cryptocurrencies, such as Bitcoin, Ethereum, and BNB, have a higher probability of generating co-bubbles in other cryptocurrencies, indicating a strong interdependence among them. Secondly, the co-bubble network experiences notable changes around crisis events, with distinct characteristics observed during the COVID-19 pandemic compared to the Russo-Ukrainian conflict. Thirdly, the transmission of co-bubble influence exhibits time-varying characteristics, and centrality rankings of influential cryptocurrencies vary around the crises. Particularly, after the COVID-19 pandemic, Bitcoin and BNB experience a decline in centrality ranking, while smaller-cap cryptocurrencies show higher centrality rankings, suggesting the transmission of co-bubble effects from large to smaller cryptocurrencies. The centrality rankings of Bitcoin, Ethereum, and BNB show a contrasting pattern, maintaining higher levels in the ongoing post Russo-Ukrainian conflict period. Fourthly, different patterns of co-bubble transmission exist for dirty and clean groups, with dirty cryptocurrencies showing a much higher intensity of co-bubbles during the Russo-Ukrainian conflict. Finally, the portfolio analysis shows that co-bubble network centrality-driven portfolios outperform the baseline portfolio strategy, dirty group portfolio strategy, and clean group portfolio strategy, during the entire sample period and particularly the COVID-19 pandemic. The findings are useful for the decision making of cryptocurrency portfolio managers and policymakers concerned with the behaviour of influential cryptocurrencies and potential risks inferences.
ISSN:0261-5606
1873-0639
DOI:10.1016/j.jimonfin.2024.103108