Détails du livre
Format
Relié
Pages
1,184
Langue
Anglais
Publié
Jun 10, 1990
Éditeur
CRC Press
Édition
3
ISBN-10
025608338X
ISBN-13
9780256083385
Description
This comprehensive work delves into the intricacies of applied linear statistical models, presenting a thorough exploration of regression, analysis of variance, and experimental designs. The authors, renowned statisticians William Wasserman, John Neter, and Michael H. Kutner, draw upon their extensive expertise to illuminate complex statistical concepts, making them accessible to a diverse audience.
Through a blend of theory and practical applications, the book guides readers from foundational principles to advanced methodologies, providing valuable insights for both novices and seasoned researchers. It emphasizes the importance of understanding underlying assumptions and the interpretative nuances of statistical outputs, fostering a deep comprehension of how to effectively apply these models in various fields.
Richly illustrated with examples and exercises, this resource not only enhances academic study but also serves as a practical reference for professionals engaged in data analysis. Overall, it stands as an essential text for anyone looking to deepen their understanding of applied statistics.
Through a blend of theory and practical applications, the book guides readers from foundational principles to advanced methodologies, providing valuable insights for both novices and seasoned researchers. It emphasizes the importance of understanding underlying assumptions and the interpretative nuances of statistical outputs, fostering a deep comprehension of how to effectively apply these models in various fields.
Richly illustrated with examples and exercises, this resource not only enhances academic study but also serves as a practical reference for professionals engaged in data analysis. Overall, it stands as an essential text for anyone looking to deepen their understanding of applied statistics.
Genres
Science & Technologie
Affaires & Économie
Santé et Bien-être
Psychologie