A family of bimodal distributions generated by distributions with positive support

J Appl Stat. 2021 Aug 6;49(14):3614-3637. doi: 10.1080/02664763.2021.1959527. eCollection 2022.

Abstract

Bimodal data sets are very common in different areas of knowledge. The crude birth rates data, fish length data, egg diameter data, the eruption and interruption times of the Old Faithful geyser, are examples of this type of data. In this paper, a new class of symmetric density functions for modeling bimodal data as described above are presented. From density functions with support on [ 0 , + ) , the symmetry is getting by reflecting the density function in the negative semi-axis with their respective normalization. In this way, if the primitive density function is unimodal, then the resulting density will be bimodal. We introduce asymmetry parameters and study their behavior, in particular the values of their modes and some other statistical values of interest. The cases for densities generated by Gamma, Weibull, Log-normal, and Birnbaum-Saunders densities, among others are studied. Statistical inference is performed from a classical perspective. A small simulation study to evaluate the benefits and limitations of the new proposal. In addition, an application to a data set related to the fetal weight in grams obtained through ultrasound in a sample of 500 units is also presented; the results show the great usefulness of the model in practical situations.

Keywords: Birnbaum–Saunders distribution; Weibull distribution; bimodal distribution; gamma distribution; log-normal distribution.

Grants and funding

The research of H. W. Gómez was supported by SEMILLERO UA-2021 (Chile). The research of G. Martínez-Flórez and R. Tovar-Falón was supported by project: Familia bimodal de distribuciones de probabilidad skew-normal alpha-potencia, Code FCA-18-15, Universidad de Córdoba (Colombia).