Книга Bayesian Modeling and Probabilistic Programming in R Julian K. Mercer

Bayesian Modeling and Probabilistic Programming in R

A Practical Guide to Hierarchical Models, Stan, and Uncertainty Quantification for Decision Making

Език: Английски език
Корици: С меки корици
Издател: Independently published
Наличност: Очаква се зареждане
Издание 07. 06. 2026
46.25 90.46 лв
Reactive PublishingUnlock the power of Bayesian methods and probabilistic programming with this clea...

Информация за книгата

Език
Английски език
Корици
Книга - С меки корици
Издадена
2026
страници
554
EAN
9798199808354
Enbook ID
52770941
Издател
Теглоt
662
Размери
152 x 229 x 35

Пълно описание

Reactive Publishing

Unlock the power of Bayesian methods and probabilistic programming with this clear, practical guide designed for data scientists, statisticians, and analysts working in R.

This book bridges the gap between theory and real-world application by teaching you how to build, fit, and interpret hierarchical Bayesian models using Stan, the leading platform for probabilistic programming. Through hands-on examples and intuitive explanations, you'll learn how to effectively quantify uncertainty, make robust inferences, and support better decision-making under complexity.

What You'll Learn:
  • The fundamentals of Bayesian modeling and why it outperforms traditional frequentist approaches in many modern applications
  • How to construct and diagnose hierarchical models for grouped, nested, and multilevel data
  • Practical workflows for probabilistic programming with Stan and R
  • Techniques for uncertainty quantification and propagation through complex models
  • Model comparison, validation, and communication of results for stakeholders

Written for intermediate to advanced R users, this guide emphasizes code you can immediately apply to your own projects, whether in research, industry, or academia. Each chapter combines conceptual clarity with reproducible examples, helping you move confidently from basic Bayesian concepts to sophisticated modeling techniques.

If you want to move beyond point estimates and p-values toward a more principled, uncertainty-aware approach to data analysis and decision making, this book provides the practical foundation you need.

Perfect for: Data scientists, quantitative researchers, statisticians, and R programmers looking to master modern Bayesian workflows.