Reconstructing Cryptocurrency Processes via Markov Chains
Tanya Araújo () and
Paulo Barbosa
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Tanya Araújo: Universidade de Lisboa
Paulo Barbosa: Universidade de Lisboa
Computational Economics, 2024, vol. 64, issue 4, No 19, 2509-2521
Abstract:
Abstract The growing attention on cryptocurrencies has led to increasing research on digital stock markets. Approaches and tools usually applied to characterize standard stocks have been applied to the digital ones. Among these tools is the identification of processes of market fluctuations. Being interesting stochastic processes, the usual statistical methods are appropriate tools for their reconstruction. There, besides chance, the description of a behavioural component shall be present whenever a deterministic pattern is ever found. Markov approaches are at the leading edge of this endeavour. In this paper, Markov chains of orders one to eight are considered as a way to forecast the dynamics of three major cryptocurrencies. It is accomplished using an empirical basis of intra-day returns. Besides forecasting, we investigate the existence of eventual long-memory components in each of those stochastic processes. Results show that predictions obtained from using the empirical probabilities are better than random choices.
Keywords: Markov chains; Cryptocurrency; Forecasting; Market processes (search for similar items in EconPapers)
JEL-codes: D8 H51 (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/s10614-023-10512-1
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