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{ "item_title" : "Bayesian Thinking in R", "item_author" : [" Lamina J. a. "], "item_description" : "BAYESIAN THINKING IN R: A PRACTICAL GUIDE TO PROBABILISTIC REASONINGIn a world driven by data, uncertainty is everywhere. From predicting market trends to analyzing medical research and understanding consumer behavior, modern decision-making requires tools that can handle uncertainty and update conclusions as new information becomes available. Bayesian Thinking in R: A Practical Guide to Probabilistic Reasoning introduces readers to one of the most powerful frameworks in modern statistics and data science Bayesian analysis while showing how to implement it using the R programming language.This book provides a practical and structured path for learning Bayesian methods from the ground up. Rather than focusing only on theory, it combines clear explanations with hands-on examples that demonstrate how Bayesian reasoning works in real analytical situations. Readers learn how to represent uncertainty using probability distributions, update beliefs using Bayes' theorem, and build statistical models that improve as new data becomes available.Designed for students, data analysts, researchers, and professionals working with data, this guide makes Bayesian concepts accessible even to readers with limited prior experience in advanced statistics. Each chapter gradually builds knowledge while introducing practical techniques for implementing Bayesian models using modern R packages and computational tools.Inside this book, readers will learn how to: - Understand probability and uncertainty using Bayesian thinking- Apply Bayes' theorem to update beliefs with new evidence- Work with prior, likelihood, and posterior distributions- Implement Bayesian models using R programming- Use Markov Chain Monte Carlo methods for complex inference- Build Bayesian regression models for real-world data- Evaluate model performance and compare Bayesian models- Conduct complete Bayesian data analysis projects from start to finishThe book includes practical code examples, visualizations, and statistical explanations that help readers see how Bayesian models work in practice. Charts and probability visualizations illustrate how uncertainty can be represented and interpreted in real data analysis scenarios.Unlike many technical texts that focus heavily on mathematical derivations, this guide emphasizes practical application and conceptual understanding. The goal is to help readers develop both the analytical skills and the computational tools needed to apply Bayesian methods confidently in research, business analytics, and data science projects.Whether you are a student learning modern statistics, a data scientist expanding your analytical toolkit, or a researcher seeking more flexible modeling techniques, Bayesian Thinking in R provides a clear and practical roadmap for mastering probabilistic reasoning and Bayesian data analysis.By the end of this book, readers will not only understand the principles of Bayesian thinking but will also be able to apply these methods using R to analyze complex datasets and make informed decisions under uncertainty.", "item_img_path" : "https://covers4.booksamillion.com/covers/bam/9/79/825/262/9798252628783_b.jpg", "price_data" : { "retail_price" : "20.00", "online_price" : "20.00", "our_price" : "20.00", "club_price" : "20.00", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Bayesian Thinking in R|Lamina J. a.

Bayesian Thinking in R : A Practical Guide to Probabilistic Reasoning

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Overview

BAYESIAN THINKING IN R: A PRACTICAL GUIDE TO PROBABILISTIC REASONING

In a world driven by data, uncertainty is everywhere. From predicting market trends to analyzing medical research and understanding consumer behavior, modern decision-making requires tools that can handle uncertainty and update conclusions as new information becomes available. Bayesian Thinking in R: A Practical Guide to Probabilistic Reasoning introduces readers to one of the most powerful frameworks in modern statistics and data science Bayesian analysis while showing how to implement it using the R programming language.

This book provides a practical and structured path for learning Bayesian methods from the ground up. Rather than focusing only on theory, it combines clear explanations with hands-on examples that demonstrate how Bayesian reasoning works in real analytical situations. Readers learn how to represent uncertainty using probability distributions, update beliefs using Bayes' theorem, and build statistical models that improve as new data becomes available.

Designed for students, data analysts, researchers, and professionals working with data, this guide makes Bayesian concepts accessible even to readers with limited prior experience in advanced statistics. Each chapter gradually builds knowledge while introducing practical techniques for implementing Bayesian models using modern R packages and computational tools.

Inside this book, readers will learn how to:

- Understand probability and uncertainty using Bayesian thinking
- Apply Bayes' theorem to update beliefs with new evidence
- Work with prior, likelihood, and posterior distributions
- Implement Bayesian models using R programming
- Use Markov Chain Monte Carlo methods for complex inference
- Build Bayesian regression models for real-world data
- Evaluate model performance and compare Bayesian models
- Conduct complete Bayesian data analysis projects from start to finish

The book includes practical code examples, visualizations, and statistical explanations that help readers see how Bayesian models work in practice. Charts and probability visualizations illustrate how uncertainty can be represented and interpreted in real data analysis scenarios.

Unlike many technical texts that focus heavily on mathematical derivations, this guide emphasizes practical application and conceptual understanding. The goal is to help readers develop both the analytical skills and the computational tools needed to apply Bayesian methods confidently in research, business analytics, and data science projects.

Whether you are a student learning modern statistics, a data scientist expanding your analytical toolkit, or a researcher seeking more flexible modeling techniques, Bayesian Thinking in R provides a clear and practical roadmap for mastering probabilistic reasoning and Bayesian data analysis.

By the end of this book, readers will not only understand the principles of Bayesian thinking but will also be able to apply these methods using R to analyze complex datasets and make informed decisions under uncertainty.

This item is Non-Returnable

Details

  • ISBN-13: 9798252628783
  • ISBN-10: 9798252628783
  • Publisher: Independently Published
  • Publish Date: March 2026
  • Dimensions: 9 x 6 x 0.23 inches
  • Shipping Weight: 0.35 pounds
  • Page Count: 112

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