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Abstract(s)
The investigation of the fractal nature of financial data has been growing in the literature.
The purpose of this paper is to investigate the impact of the COVID-19 pandemic on the efficiency of
agricultural futures markets by using multifractal detrended fluctuation analysis (MF-DFA). To better
understand the relative changes in the efficiency of agriculture commodities due to the pandemic, we
split the dataset into two equal periods of seven months, i.e., 1 August 2019 to 10 March 2020 and
11 March 2020 to 25 September 2020. We used the high-frequency data at 15 min intervals of cocoa,
cotton, coffee, orange juice, soybean, and sugar. The findings reveal that the COVID-19 pandemic
has great but varying impacts on the intraday multifractal properties of the selected agricultural
future markets. In particular, the London sugar witnessed the lowest multifractality while orange
juice exhibited the highest multifractality before the pandemic declaration. Cocoa became the most
efficient while the cotton exhibited the minimum efficient pattern after the pandemic. Our findings
show that the highest improvement is found in the market efficiency of orange juice. Furthermore,
the behavior of these agriculture commodities shifted from a persistent to an antipersistent behavior
after the pandemic. The information given by the detection of multifractality can be used to support
investment and policy-making decisions.
Description
Keywords
COVID-19 pandemic agriculture commodity MF-DFA high frequency efficiency
Citation
Publisher
MDPI