Finite mixtures are a flexible and common tool for modelling underlying group structures in the data. It is often the case that groups in the datapresentnon-normalfeatures,suchasasymmetryandheavy tails. To accommodate these aspects, in this work, we first introduce a new distribution: the multivariate skew tail-inflated normal. Then, we use this distribution in a mixture modelling setting. An AECM algorithm is disclosed for maximum-likelihood parameter estimation. A simulation study is conducted to assess the goodness of the proposed algorithm in recovering the model parameters and data classification. Furthermore, we analyze two real datasets: one concerninglog-returnsoffourcryptocurrencies,andtheotherregarding performance indicators of university courses across Italy.

Finite mixtures of multivariate skew tail-inflated normal distributions

Tomarchio S. D.
Primo
;
Punzo A.
Ultimo
2025-01-01

Abstract

Finite mixtures are a flexible and common tool for modelling underlying group structures in the data. It is often the case that groups in the datapresentnon-normalfeatures,suchasasymmetryandheavy tails. To accommodate these aspects, in this work, we first introduce a new distribution: the multivariate skew tail-inflated normal. Then, we use this distribution in a mixture modelling setting. An AECM algorithm is disclosed for maximum-likelihood parameter estimation. A simulation study is conducted to assess the goodness of the proposed algorithm in recovering the model parameters and data classification. Furthermore, we analyze two real datasets: one concerninglog-returnsoffourcryptocurrencies,andtheotherregarding performance indicators of university courses across Italy.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11769/684690
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