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Regularity in Stock Market Indices within Turbulence Periods: The Sample Entropy Approach
Authors:Joanna Olbry   El bieta Majewska
Institution:1.Faculty of Computer Science, Bialystok University of Technology, Wiejska 45a, 15-351 Białystok, Poland;2.Faculty of Economics and Finance, University of Bialystok, Warszawska 63, 15-062 Białystok, Poland;
Abstract:The aim of this study is to assess and compare changes in regularity in the 36 European and the U.S. stock market indices within major turbulence periods. Two periods are investigated: the Global Financial Crisis in 2007–2009 and the COVID-19 pandemic outbreak in 2020–2021. The proposed research hypothesis states that entropy of an equity market index decreases during turbulence periods, which implies that regularity and predictability of a stock market index returns increase in such cases. To capture sequential regularity in daily time series of stock market indices, the Sample Entropy algorithm (SampEn) is used. Changes in the SampEn values before and during the particular turbulence period are estimated. The empirical findings are unambiguous and confirm no reason to reject the research hypothesis. Moreover, additional formal statistical analyses indicate that the SampEn results are similar both for developed and emerging European economies. Furthermore, the rolling-window procedure is utilized to assess the evolution of SampEn over time.
Keywords:Sample Entropy (SampEn)  stock market index  regularity  predictability  Global Financial Crisis  COVID-19  rolling-window
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