Volatility dynamics of Tunisian stock market before and during COVID-19 outbreak and diversification benefits of Bitcoin
Marwa Ben Salem,
Mohamed Fakhfekh and
Ahmed Jeribi
Afro-Asian Journal of Finance and Accounting, 2023, vol. 13, issue 5, 651-672
Abstract:
The objective of this paper is to select the appropriate GARCH model fit for analysing the volatility dynamics of the Tunisian sectoral stock market indices and Bitcoin during the COVID-19 outbreak period as well as to examine the Bitcoin diversification benefits. On using four models (EGARCH, FIGARCH, FIEGARCH, and TGARCH) and mean-variance spanning test, our findings prove that following the COVID-19 outbreak, the consumer service, financial and distribution, industrial, basic materials and banking sectors' return volatilities tend to have a relatively high positive and significant asymmetric effect, as compared to the pre-COVID period. Similarly, the results reveal that the Bitcoin proves to bring about significant diversification benefits once incorporated into a well-diversified benchmark portfolio, predominantly throughout the COVID-19 outbreak. Overall, our results could be of great benefit to investors seeking to account for any future volatility and implement special hedging strategies under COVID-19 crisis.
Keywords: Tunisian sectoral stock market indices; GARCH models; COVID-19 outbreak; Bitcoin; mean-variance spanning test. (search for similar items in EconPapers)
Date: 2023
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