Book Details
Format
Hardcover
Pages
384
Language
English
Published
Aug 18, 2020
Publisher
Wiley
Edition
2
ISBN-10
1119392373
ISBN-13
9781119392378
Description
In this comprehensive guide, the authors delve into the intricacies of regression modeling and data analysis, illuminating both foundational concepts and advanced techniques. With a keen focus on practical applications using the R programming language, the work stands as an essential resource for statisticians and data analysts alike. By leveraging real-world examples, the authors effectively bridge the gap between theoretical understanding and practical implementation, enhancing the reader's ability to navigate complex datasets.
Chatterjee and Simonoff explore a variety of regression methods, detailing their applications across numerous fields. Their systematic approach enables readers to gain valuable insights into model selection, diagnostics, and prediction. The authors emphasize the importance of understanding underlying assumptions and the potential pitfalls that can arise in data analysis.
This resource not only equips readers with the necessary skills to conduct rigorous regression analyses but also encourages a deeper appreciation for the art of statistical modeling. As a result, it fosters an intuitive grasp of both the power and limitations inherent in statistical inference.
Chatterjee and Simonoff explore a variety of regression methods, detailing their applications across numerous fields. Their systematic approach enables readers to gain valuable insights into model selection, diagnostics, and prediction. The authors emphasize the importance of understanding underlying assumptions and the potential pitfalls that can arise in data analysis.
This resource not only equips readers with the necessary skills to conduct rigorous regression analyses but also encourages a deeper appreciation for the art of statistical modeling. As a result, it fosters an intuitive grasp of both the power and limitations inherent in statistical inference.