Mathematics (Apr 2022)

Modelling Asymmetric Data by Using the Log-Gamma-Normal Regression Model

  • Roger Tovar-Falón,
  • Guillermo Martínez-Flórez,
  • Heleno Bolfarine

DOI
https://doi.org/10.3390/math10071199
Journal volume & issue
Vol. 10, no. 7
p. 1199

Abstract

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In this paper, we propose a linear regression model in which the error term follows a log-gamma-normal (LGN) distribution. The assumption of LGN distribution gives flexibility to accommodate skew forms to the left and to the right. Kurtosis greater or smaller than the normal model can also be accommodated. The regression model for censored asymmetric data is also considered (censored LGN model). Parameter estimation is implemented using the maximum likelihood approach and a small simulation study is conducted to evaluate parameter recovery. The main conclusion is that the approach is very much satisfactory for moderate and large sample sizes. Results for two applications of the proposed model to real datasets are provided for illustrative purposes.

Keywords