书籍详情
格式
平装书
页数
324
语言
英语
已发布
Jun 30, 2020
出版商
Routledge
版本
1
ISBN-10
0367572265
ISBN-13
9780367572266
描述
This book delves into the intricate world of Bayesian regression modeling, presenting readers with comprehensive guidance on utilizing Integrated Nested Laplace Approximations (INLA) for practical applications. The authors, Julian J. Faraway, Xiaofeng Wang, and Yu Ryan Yue, bring together their expertise to explore innovative methodologies that enhance understanding and implementation of Bayesian techniques in regression scenarios.
With a blend of theoretical insights and practical examples, the authors meticulously outline the formulation of Bayesian models and the step-by-step process of applying INLA to real-world data problems. Their clear explanations and illustrative case studies make complex concepts accessible, empowering readers to leverage Bayesian methods effectively. This work addresses both novices eager to grasp the fundamentals and experienced practitioners looking to refine their analytical skills, making it a valuable resource in the field of statistical modeling and data analysis.
With a blend of theoretical insights and practical examples, the authors meticulously outline the formulation of Bayesian models and the step-by-step process of applying INLA to real-world data problems. Their clear explanations and illustrative case studies make complex concepts accessible, empowering readers to leverage Bayesian methods effectively. This work addresses both novices eager to grasp the fundamentals and experienced practitioners looking to refine their analytical skills, making it a valuable resource in the field of statistical modeling and data analysis.
类型
健康与保健