Geometric skew-Cauchy distribution as an alternative to the skew-normal and geometric skew-normal distributions
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University of Pretoria
Abstract
The skew-normal distribution was popularised by Azzalini [4] to model skewed data. However, the skew-normal distribution is always unimodal. Kundu [24] recently presented the geometric skew-normal distribution by considering a geometric compounding sum of normal random variables. This distribution
is more flexible than the skew-normal distribution since it can be multimodal.
In this dissertation we present a new distribution namely the geometric skew-Cauchy distribution. The idea follows a similar approach to that of Kundu's. The difference, however, is that we consider a geometric compounding sum of Cauchy random variables.
The inclusion of a simulation and application chapter demonstrates the practical use of this new distribution. It turns out that the geometric skew-Cauchy distribution is also more flexible than the skew-normal distribution.
It is concluded that this new distribution can be used as an alternative to the geometric skew-normal distribution since both distributions can be multimodal. The advantage over the geometric skew-normal distribution, is the ability of the geometric skew-Cauchy distribution to model fatter-tailed data.
Description
Mini Dissertation (MSc (Advanced Data Analytics))--University of Pretoria, 2021.
Keywords
Statistics, Distribution Theory, Distributions, Multimodal distributions, Data Analytics, Data Science, skewed data, UCTD
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