Discrete Choice Analysis with R Discrete Choice Analysis with R
Use R

Discrete Choice Analysis with R

    • 87,99 €
    • 87,99 €

Publisher Description

This book is designed as a gentle introduction to the fascinating field of choice modeling and its practical implementation using the R language. Discrete choice analysis is a family of methods useful to study individual decision-making. With strong theoretical foundations in consumer behavior, discrete choice models are used in the analysis of health policy, transportation systems, marketing, economics, public policy, political science, urban planning, and criminology, to mention just a few fields of application. The book does not assume prior knowledge of discrete choice analysis or R, but instead strives to introduce both in an intuitive way, starting from simple concepts and progressing to more sophisticated ideas. Loaded with a wealth of examples and code, the book covers the fundamentals of data and analysis in a progressive way. Readers begin with simple data operations and the underlying theory of choice analysis and conclude by working with sophisticated models including latent class logit models, mixed logit models, and ordinal logit models with taste heterogeneity. Data visualization is emphasized to explore both the input data as well as the results of models. This book should be of interest to graduate students, faculty, and researchers conducting empirical work using individual level choice data who are approaching the field of discrete choice analysis for the first time. In addition, it should interest more advanced modelers wishing to learn about the potential of R for discrete choice analysis. By embedding the treatment of choice modeling within the R ecosystem, readers benefit from learning about the larger R family of packages for data exploration, analysis, and visualization.

GENRE
Science & Nature
RELEASED
2023
25 January
LANGUAGE
EN
English
LENGTH
355
Pages
PUBLISHER
Springer International Publishing
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
91.4
MB
Innovations in Classification, Data Science, and Information Systems Innovations in Classification, Data Science, and Information Systems
2006
Introduction to Bayesian Estimation and Copula Models of Dependence Introduction to Bayesian Estimation and Copula Models of Dependence
2017
Introduction to Statistical Decision Theory Introduction to Statistical Decision Theory
2019
New Perspectives in Statistical Modeling and Data Analysis New Perspectives in Statistical Modeling and Data Analysis
2011
Working With Data: Questions and Answers (2020 Edition) Working With Data: Questions and Answers (2020 Edition)
2019
Advanced Statistical Methods for the Analysis of Large Data-Sets Advanced Statistical Methods for the Analysis of Large Data-Sets
2012
ggplot2 ggplot2
2016
Applied Spatial Data Analysis with R Applied Spatial Data Analysis with R
2013
Bayesian Networks in R Bayesian Networks in R
2014
Biostatistics with R Biostatistics with R
2011
Wavelet Methods in Statistics with R Wavelet Methods in Statistics with R
2010
Introductory Time Series with R Introductory Time Series with R
2009