Детали книги
Формат
Твердый переплет
Страницы
300
Язык
Английский
Опубликовано
Dec 31, 2023
Издатель
Chapman and Hall/CRC
ISBN-10
1482243377
ISBN-13
9781482243376
Описание
Bayesian Nonparametric Modeling and Data Analysis offers a comprehensive exploration of flexible modeling techniques that enable researchers to navigate the complexities of data analysis. The authors, George Karabatsos and Stephen G. Walker, present methods that allow for an adaptable approach to understanding diverse data structures and drawing insightful conclusions.
The text delves into the principles of Bayesian nonparametrics, highlighting its effectiveness in capturing intricate patterns often missed by traditional models. By blending theoretical foundations with practical applications, the authors empower statisticians and data scientists to apply these approaches in their work.
Throughout the book, readers are introduced to a variety of models that accommodate the uncertainty inherent in data analysis. This equips them with the tools to make informed predictions and enhances their ability to tackle real-world problems across multiple disciplines.
The text delves into the principles of Bayesian nonparametrics, highlighting its effectiveness in capturing intricate patterns often missed by traditional models. By blending theoretical foundations with practical applications, the authors empower statisticians and data scientists to apply these approaches in their work.
Throughout the book, readers are introduced to a variety of models that accommodate the uncertainty inherent in data analysis. This equips them with the tools to make informed predictions and enhances their ability to tackle real-world problems across multiple disciplines.
Жанры
Бизнес и экономика
Психология