ABSTRACT

A User's Guide to Business Analytics provides a comprehensive discussion of statistical methods useful to the business analyst. Methods are developed from a fairly basic level to accommodate readers who have limited training in the theory of statistics. A substantial number of case studies and numerical illustrations using the R-software package are provided for the benefit of motivated beginners who want to get a head start in analytics as well as for experts on the job who will benefit by using this text as a reference book.

The book is comprised of 12 chapters. The first chapter focuses on business analytics, along with its emergence and application, and sets up a context for the whole book. The next three chapters introduce R and provide a comprehensive discussion on descriptive analytics, including numerical data summarization and visual analytics. Chapters five through seven discuss set theory, definitions and counting rules, probability, random variables, and probability distributions, with a number of business scenario examples. These chapters lay down the foundation for predictive analytics and model building.

Chapter eight deals with statistical inference and discusses the most common testing procedures. Chapters nine through twelve deal entirely with predictive analytics. The chapter on regression is quite extensive, dealing with model development and model complexity from a user’s perspective. A short chapter on tree-based methods puts forth the main application areas succinctly. The chapter on data mining is a good introduction to the most common machine learning algorithms. The last chapter highlights the role of different time series models in analytics. In all the chapters, the authors showcase a number of examples and case studies and provide guidelines to users in the analytics field.

chapter 1|7 pages

What Is Analytics?

chapter 2|10 pages

Introducing R—An Analytics Software

chapter 3|30 pages

Reporting Data

chapter 4|25 pages

Statistical Graphics and Visual Analytics

chapter 5|29 pages

Probability

chapter 7|38 pages

Continuous Random Variables

chapter 8|41 pages

Statistical Inference

chapter 9|58 pages

Regression for Predictive Model Building

chapter 10|19 pages

Decision Trees

chapter 11|24 pages

Data Mining and Multivariate Methods

chapter 12|51 pages

Modeling Time Series Data for Forecasting