ABSTRACT

Statistical distributions are essential tools to model the characteristics of datasets, such as right or left skewness, bi-modality or multi-modality observed in different applied sciences, such as engineering, medicine, and finance. The well-known distributions like normal, Weibull, gamma and Lindley are extensively used because of their simple forms and identifiability properties. In the last decade, researchers have focused on the more complex and flexible distributions, referred to as Generalized or simply G families of probability distributions, to increase the modelling capability of these distributions by adding one or more shape parameters.

The main aim of this edited book is to present new contributions by researchers in the field of G families of probability distributions. The book will help researchers to:

  • Develop new univariate continuous and discrete G families of probability distributions.
  • Develop new bivariate continuous and discrete G families of probability distributions.
  • Derive beneficial mathematical properties such as ordinary and incomplete moments, moment generating functions, residual life and reversed residual life functions, order statistics, quantile spread ordering and entropies, and some bivariate and multivariate extensions of the new and existing models using a simple-type copula.

chapter Chapter 1|30 pages

A New Compound G Family of Distributions

Properties, Copulas, Characterizations, Real Data Applications with Different Methods of Estimation

chapter Chapter 2|24 pages

A Novel Family of Continuous Distributions

Properties, Characterizations, Statistical Modeling and Different Estimation Methods

chapter Chapter 4|15 pages

A Family of Continuous Probability Distributions

Theory, Characterizations, Properties and Different Copulas

chapter Chapter 5|14 pages

New Odd Log-Logistic Family of Distributions

Properties, Regression Models and Applications

chapter Chapter 9|12 pages

The Topp-Leone-G Power Series Distribution

Its Properties and Applications

chapter Chapter 16|22 pages

Exponentiated Muth Distribution

Properties and Applications

chapter Chapter 18|14 pages

Length Biased Weighted New Quasi Lindley Distribution

Statistical Properties and Applications

chapter Chapter 19|14 pages

A New Alpha Power Transformed Weibull Distribution

Properties and Applications