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Erschienen in: Asia-Pacific Financial Markets 3/2023

25.10.2022 | Original Research

Disentangling the Nonlinearity Effect in Cryptocurrency Markets During the Covid-19 Pandemic: Evidence from a Regime-Switching Approach

verfasst von: Nidhal Mgadmi, Azza Béjaoui, Wajdi Moussa

Erschienen in: Asia-Pacific Financial Markets | Ausgabe 3/2023

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Abstract

In this paper, we attempt to understand and identify the cyclical fluctuations in cryptocurrency markets. To this end, we apply the Markov-Switching approach on daily prices of 17 selected digital currencies. This model allows us to capture the nonlinear structure in cryptocurrencies’ prices. The empirical results clearly show potential difference(s) among digital currencies when they react to the varying levels of the pandemic's severity. The existence of two distinguishable states and each state seems to be characterized by different features of market cycle’s phase for each cryptocurrency. So, the Covid19 pandemic affects asymmetrically the different market phases of digital currencies. Such findings can have insightful portfolios implications.

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Fußnoten
1
Obviously, the mean and variance of the duration for regime 2 is calculated using the same logic.
 
2
Needless to say, several economic and financial series are generally not stationary. Therefore, it is necessary to transform before using an MS model. That is why one might consider the series Yt = Log (Xt)—log (Xt-L) where Xt is the original series and L is the degree of smoothing of the series. Such transformation can stabilize the variance of the process. The choice of the smoothing degree is not without cost given that a high level of smoothing eliminates high frequency variations. The optimal degree of smoothing is an annual smoothing (L = 1), because it avoids the greatest number of false signals at the 5% significance level.
 
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Metadaten
Titel
Disentangling the Nonlinearity Effect in Cryptocurrency Markets During the Covid-19 Pandemic: Evidence from a Regime-Switching Approach
verfasst von
Nidhal Mgadmi
Azza Béjaoui
Wajdi Moussa
Publikationsdatum
25.10.2022
Verlag
Springer Japan
Erschienen in
Asia-Pacific Financial Markets / Ausgabe 3/2023
Print ISSN: 1387-2834
Elektronische ISSN: 1573-6946
DOI
https://doi.org/10.1007/s10690-022-09384-6

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