Bayesian Workflow
暫譯: 貝葉斯工作流程

Gelman, Andrew, Vehtari, Aki, McElreath, Richard

  • 出版商: CRC
  • 出版日期: 2026-06-26
  • 售價: $5,270
  • 貴賓價: 9.5$5,006
  • 語言: 英文
  • 頁數: 538
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 0367490188
  • ISBN-13: 9780367490188
  • 相關分類: R 語言
  • 尚未上市,無法訂購

商品描述

Bayesian statistics and statistical practice have evolved over the years, driven by advancements in theory, methods, and computational tools. Bayesian Workflow explores the intricate workflows of applied Bayesian statistics, aiming to uncover the tacit knowledge often overlooked in published papers and textbooks. By systematizing the process of Bayesian model development, the book seeks to improve applied analyses and inspire future innovations in theory, methods, and software. It emphasizes the importance of iterative model building, model checking, computational troubleshooting, and simulated-data experimentation, offering a comprehensive perspective on statistical analysis.

Through detailed examples and practical guidance, the book bridges the gap between theory and application, empowering practitioners and researchers to navigate the complexities of Bayesian inference. It is not a checklist or cookbook but a flexible framework for understanding and resolving challenges in statistical modeling and decision-making under uncertainty.

Features

  • Covers all aspects of Bayesian statistical workflow, including model building, inference, validation, troubleshooting, and understanding
  • Demonstrates iterative model development and computational problem-solving through real-world case studies
  • Explores computational challenges, calibration checking, and connections between modeling and computation
  • Highlights the importance of checking models under diverse conditions to understand their limitations and improve their robustness
  • Discusses how Bayesian principles apply to non-Bayesian methods in statistics and machine learning
  • Includes code snippets, exercises, and links to full datasets and code in R and Stan, with applicability to other programming environments like Python and Julia

This book is designed for practitioners of applied Bayesian statistics, particularly users of probabilistic programming languages such as Stan, as well as developers of methods and software tailored to these users. It also targets researchers in Bayesian theory and methods, offering insights into understudied aspects of statistical workflows. Instructors and students will find adaptable exercises and case studies to enhance their learning experience. Beyond Bayesian inference, the book's principles are relevant to users of non-Bayesian methods, making it a valuable resource for statisticians, data scientists, and machine learning professionals seeking to improve their modeling and decision-making processes.

商品描述(中文翻譯)

貝葉斯統計學和統計實務隨著理論、方法和計算工具的進步而不斷演變。《貝葉斯工作流程》探討了應用貝葉斯統計的複雜工作流程,旨在揭示在已發表的論文和教科書中常被忽視的隱性知識。通過系統化貝葉斯模型開發的過程,本書旨在改善應用分析並激發未來在理論、方法和軟體方面的創新。它強調迭代模型構建、模型檢查、計算故障排除和模擬數據實驗的重要性,提供了對統計分析的全面視角。

通過詳細的範例和實用指導,本書彌合了理論與應用之間的鴻溝,使實務工作者和研究人員能夠駕馭貝葉斯推斷的複雜性。這不是一個檢查清單或食譜,而是一個靈活的框架,用於理解和解決不確定性下的統計建模和決策挑戰。

**特色**

- 涵蓋貝葉斯統計工作流程的所有方面,包括模型構建、推斷、驗證、故障排除和理解
- 通過真實案例研究展示迭代模型開發和計算問題解決
- 探討計算挑戰、校準檢查以及建模與計算之間的聯繫
- 強調在不同條件下檢查模型的重要性,以了解其局限性並提高其穩健性
- 討論貝葉斯原則如何應用於統計和機器學習中的非貝葉斯方法
- 包含程式碼片段、練習題以及指向完整數據集和R及Stan程式碼的連結,並適用於其他程式語言環境,如Python和Julia

本書旨在為應用貝葉斯統計的實務工作者設計,特別是使用概率編程語言如Stan的用戶,以及針對這些用戶量身定制的方法和軟體的開發者。它同樣針對貝葉斯理論和方法的研究人員,提供對統計工作流程中未充分研究的方面的見解。教師和學生將發現可調整的練習和案例研究,以增強他們的學習體驗。除了貝葉斯推斷外,本書的原則對於使用非貝葉斯方法的用戶也具有相關性,成為統計學家、數據科學家和機器學習專業人士尋求改善其建模和決策過程的寶貴資源。

作者簡介

Andrew Gelman is a professor of statistics and political science at Columbia University

Aki Vehtari is a professor of computer science at Aalto University

Richard McElreath is the director of the Max Planck Institute for Evolutionary Anthropology

Daniel Simpson is a machine learning engineer at dottxt

Charles Margossian is an assistant professor of statistics at the University of British Columbia

Yuling Yao is an assistant professor of statistics at the University of Texas

Lauren Kennedy is a senior lecturer in mathematical science at the University of Adelaide

Jonah Gabry is an applied statistics researcher at Columbia University

Paul-Christian Bürkner is a professor of statistics at TU Dortmund University

Martin Modrák is a researcher in bioinformatics at Charles University

Vianey Leos Barajas is an assistant professor of statistical sciences at the University of Toronto

作者簡介(中文翻譯)

安德魯·吉爾曼是哥倫比亞大學的統計學與政治學教授。

阿基·維塔里是阿爾托大學的計算機科學教授。

理查德·麥克艾利斯是馬克斯·普朗克進化人類學研究所的所長。

丹尼爾·辛普森是dottxt的機器學習工程師。

查爾斯·馬戈西安是英屬哥倫比亞大學的助理教授。

姚玉玲是德克薩斯大學的助理教授。

勞倫·肯尼迪是阿德萊德大學數學科學的高級講師。

喬納·加布里是哥倫比亞大學的應用統計研究員。

保羅·克里斯蒂安·比爾克納是多特蒙德工業大學的統計學教授。

馬丁·莫德拉克是查爾斯大學的生物資訊學研究員。

維安妮·萊奧斯·巴哈斯是多倫多大學的統計科學助理教授。