Distributions for Modeling Location, Scale, and Shape

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A01=Fernanda De Bastiani
A01=Gillian Z. Heller
A01=Mikis D. Stasinopoulos
A01=Robert A. Rigby
advanced distribution modeling in R
applied data science statistics
Author_Fernanda De Bastiani
Author_Gillian Z. Heller
Author_Mikis D. Stasinopoulos
Author_Robert A. Rigby
Beta Binomial Distribution
binomial
Binomial Denominator
Burr III
Burr XII
Category=PBT
continuous
continuous and discrete distributions
count data
Cumulative Distribution Function
Data Set
discrete
Distribution Regression Models
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
GAIC
GAMLSS
GAMLSS family
GAMLSS Model
GB2 Distribution
generalized additive models
Generalized Inverse Gaussian
Generalized Tobit Model
Global Deviance
Head Circumference
Inflated Distributions
Inverse Gaussian
Kurtosis Parameter
Location Shift Parameter
mixed
mixed distributions
modeling location
Package Gamlss
Poisson Inverse Gaussian
Power Exponential Distribution
regression analysis methods
robust parameter estimation
scale
shape
skewness
Skewness Parameter
statistical modeling techniques
tail heaviness classification
Tweedie Distributions
Worm Plots

Product details

  • ISBN 9781032089423
  • Weight: 1011g
  • Dimensions: 178 x 254mm
  • Publication Date: 30 Jun 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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This is a book about statistical distributions, their properties, and their application to modelling the dependence of the location, scale, and shape of the distribution of a response variable on explanatory variables. It will be especially useful to applied statisticians and data scientists in a wide range of application areas, and also to those interested in the theoretical properties of distributions. This book follows the earlier book ‘Flexible Regression and Smoothing: Using GAMLSS in R’, [Stasinopoulos et al., 2017], which focused on the GAMLSS model and software. GAMLSS (the Generalized Additive Model for Location, Scale, and Shape, [Rigby and Stasinopoulos, 2005]), is a regression framework in which the response variable can have any parametric distribution and all the distribution parameters can be modelled as linear or smooth functions of explanatory variables. The current book focuses on distributions and their application.

Key features:



  • Describes over 100 distributions, (implemented in the GAMLSS packages in R), including continuous, discrete and mixed distributions.




  • Comprehensive summary tables of the properties of the distributions.




  • Discusses properties of distributions, including skewness, kurtosis, robustness and an important classification of tail heaviness.




  • Includes mixed distributions which are continuous distributions with additional specific values with point probabilities.




  • Includes many real data examples, with R code integrated in the text for ease of understanding and replication.




  • Supplemented by the gamlss website.


This book will be useful for applied statisticians and data scientists in selecting a distribution for a univariate response variable and modelling its dependence on explanatory variables, and to those interested in the properties of distributions.

Robert Rigby was researching in Statistics at London Metropolitan University for over 30 years specializing in distributions and advanced regression and smoothing models (for supervised learning). He is one of the two original developers of GAMLSS models. He is currently a freelance consultant.

Mikis Stasinopoulos is a statistician. He has a considerable experience in applied statistics and he is one of the two creators of GAMLSS. He worked as the director of STORM, the statistics and mathematics research centre of London Metropolitan University and now he is working as an independent statistical consultant.

Gillian Heller is Professor of Statistics at Macquarie University, Sydney. Her research interests are mainly in flexible regression models for heavy-tailed count data, with applications in biostatistics and insurance.

Fernanda De Bastiani is a permanent lecturer in the Statistics Department at Universidade Federal de Pernambuco, Brazil. Her research interests are mainly in flexible regression models, spatial data analysis and influential diagnostics in regression models.

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