We are here to help you learn R for marketing research and analytics. R is a great choice for marketing analysts. It offers unsurpassed capabilities for fitting statistical models. It is extensible and able to process data from many different systems, in a variety of forms, for both small and lar
R for Marketing Research and Analytics
β Scribed by Chapman, Chris;Feit, Elea McDonnell
- Publisher
- Springer International Publishing
- Year
- 2019
- Tongue
- English
- Series
- Use R!
- Edition
- 2nd ed.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
"The 2nd edition of R for Marketing Research and Analytics continues to be the best place to learn R for marketing research. This book is a complete introduction to the power of R for marketing research practitioners. The text describes statistical models from a conceptual point of view with a minimal amount of mathematics, presuming only an introductory knowledge of statistics. Hands-on chapters accelerate the learning curve by asking readers to interact with R from the beginning. Core topics include the R language, basic statistics, linear modeling, and data visualization, which is presented throughout as an integral part of analysis. Later chapters cover more advanced topics yet are intended to be approachable for all analysts. These sections examine logistic regression, customer segmentation, hierarchical linear modeling, market basket analysis, structural equation modeling, and conjoint analysis in R. The text uniquely presents Bayesian models with a minimally complex approach, demonstrating and explaining Bayesian methods alongside traditional analyses for analysis of variance, linear models, and metric and choice-based conjoint analysis. With its emphasis on data visualization, model assessment, and development of statistical intuition, this book provides guidance for any analyst looking to develop or improve skills in R for marketing applications. The 2nd edition increases the book's utility for students and instructors with the inclusion of exercises and classroom slides. At the same time, it retains all of the features that make it a vital resource for practitioners: non-mathematical exposition, examples modeled on real world marketing problems, intuitive guidance on research methods, and immediately applicable code. ." -- ProvΓ© de l'editor.
β¦ Table of Contents
ContΓ©: Chapter 1: Welcom to R --
Chapter 2: An Overview of the R Language --
Chapter 3: Describing Data --
Chapter 4: Relationships Between Continuous Variables --
Chapter 5: Comparing Groups: Tables and Visualizations --
Chapter 6: Comparing Groups: Statistical Tests --
Chapter 7: Identifying Drivers of Outcomes: Linear Models --
Chapter 8: Reducing Data Complexity --
Chapter 9: Assorted Linear Modeling Topics --
Chapter 10: Confirmatory Factor Analysis and Structural Equation Modeling --
Chapter 11: Segmentation: Clustering and Classification --
Chapter 12: Association Rules for Market Basket Analysis --
Chapter 13: Choice Modeling --
Chapter 14: Marketing Mix Models --
Appendix A: R Versions and Related Software --
Appendix B: Scaling Up --
Appendix C: Packages Used --
Appendix D: Online Materials and Data Files
β¦ Subjects
EstadΓstica matemΓ tica;MΓ rqueting;Llibres electrΓ²nics
π SIMILAR VOLUMES
The 2nd edition of R for Marketing Research and Analytics continues to be the best place to learn R for marketing research. This book is a complete introduction to the power of R for marketing research practitioners. The text describes statistical models from a conceptual point of view with a minima
<p><p>This book<i></i>is a complete introduction to the power of R for marketing research practitioners. The text describes statistical models from a conceptual point of view with a minimal amount of mathematics, presuming only an introductory knowledge of statistics. Hands-on chapters accelerate th
<p><p>This book provides an introduction to quantitative marketing with Python. The book presents a hands-on approach to using Python for real marketing questions, organized by key topic areas. Following the Python scientific computing movement toward reproducible research, the book presents all ana
11,322 p. : 26 cm