Quite often real data exhibit non-normal features, such as asymmetry and heavy tails, and present a latent group structure. In this paper, we first propose the multivariate skew shifted exponential normal distribution that can account for these non-normal characteristics. Then, we use this distribution in a finite mixture modeling framework. An EM algorithm is illustrated for maximum-likelihood parameter estimation. We provide a simulation study that compares the fitting performance of our model with those of several alternative models. The comparison is also conducted on a real dataset concerning the log returns of four cryptocurrencies.

Tomarchio, S. D., Bagnato, L., Punzo, A., Model-based clustering using a new multivariate skew distribution, <<ADVANCES IN DATA ANALYSIS AND CLASSIFICATION>>, 2023; (July): 1-23. [doi:10.1007/s11634-023-00552-8] [https://hdl.handle.net/10807/252214]

Model-based clustering using a new multivariate skew distribution

Bagnato, Luca
Secondo
;
2023

Abstract

Quite often real data exhibit non-normal features, such as asymmetry and heavy tails, and present a latent group structure. In this paper, we first propose the multivariate skew shifted exponential normal distribution that can account for these non-normal characteristics. Then, we use this distribution in a finite mixture modeling framework. An EM algorithm is illustrated for maximum-likelihood parameter estimation. We provide a simulation study that compares the fitting performance of our model with those of several alternative models. The comparison is also conducted on a real dataset concerning the log returns of four cryptocurrencies.
2023
Inglese
Tomarchio, S. D., Bagnato, L., Punzo, A., Model-based clustering using a new multivariate skew distribution, <<ADVANCES IN DATA ANALYSIS AND CLASSIFICATION>>, 2023; (July): 1-23. [doi:10.1007/s11634-023-00552-8] [https://hdl.handle.net/10807/252214]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/252214
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