Predictive Analytics Predictive Analytics
Wiley Series in Probability and Statistics

Predictive Analytics

Parametric Models for Regression and Classification Using R

    • ¥17,800
    • ¥17,800

発行者による作品情報

Provides a foundation in classical parametric methods of regression and classification essential for pursuing advanced topics in predictive analytics and statistical learning

This book covers a broad range of topics in parametric regression and classification including multiple regression, logistic regression (binary and multinomial), discriminant analysis, Bayesian classification, generalized linear models and Cox regression for survival data. The book also gives brief introductions to some modern computer-intensive methods such as classification and regression trees (CART), neural networks and support vector machines.

The book is organized so that it can be used by both advanced undergraduate or masters students with applied interests and by doctoral students who also want to learn the underlying theory. This is done by devoting the main body of the text of each chapter with basic statistical methodology illustrated by real data examples. Derivations, proofs and extensions are relegated to the Technical Notes section of each chapter, Exercises are also divided into theoretical and applied. Answers to selected exercises are provided. A solution manual is available to instructors who adopt the text.

Data sets of moderate to large sizes are used in examples and exercises. They come from a variety of disciplines including business (finance, marketing and sales), economics, education, engineering and sciences (biological, health, physical and social). All data sets are available at the book’s web site. Open source software R is used for all data analyses. R codes and outputs are provided for most examples. R codes are also available at the book’s web site.

Predictive Analytics: Parametric Models for Regression and Classification Using R is ideal for a one-semester upper-level undergraduate and/or beginning level graduate course in regression for students in business, economics, finance, marketing, engineering, and computer science. It is also an excellent resource for practitioners in these fields.

ジャンル
科学/自然
発売日
2020年
9月30日
言語
EN
英語
ページ数
384
ページ
発行者
Wiley
販売元
John Wiley & Sons, Inc.
サイズ
24.7
MB
Statistical Data Analytics Statistical Data Analytics
2015年
Regression Analysis and its Application Regression Analysis and its Application
2018年
Bayesian Methods for Management and Business Bayesian Methods for Management and Business
2014年
Bayesian Regression Modeling with INLA Bayesian Regression Modeling with INLA
2018年
Industrial Data Analytics for Diagnosis and Prognosis Industrial Data Analytics for Diagnosis and Prognosis
2021年
Applied Regression Modeling Applied Regression Modeling
2020年
Handbook of Regression Analysis With Applications in R Handbook of Regression Analysis With Applications in R
2020年
Reinsurance Reinsurance
2017年
Statistical Shape Analysis Statistical Shape Analysis
2016年
Multivariate Density Estimation Multivariate Density Estimation
2015年
Applied Longitudinal Analysis Applied Longitudinal Analysis
2012年
Applied Linear Regression Applied Linear Regression
2013年