2023
DOI: 10.48550/arxiv.2301.09722
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Expectile hidden Markov regression models for analyzing cryptocurrency returns

Abstract: In this paper we develop a linear expectile hidden Markov model for the analysis of cryptocurrency time series in a risk management framework. The methodology proposed allows to focus on extreme returns and describe their temporal evolution by introducing in the model time-dependent coefficients evolving according to a latent discrete homogeneous Markov chain. As it is often used in the expectile literature, estimation of the model parameters is based on the asymmetric normal distribution. Maximum likelihood e… Show more

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