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Introduction to Bayesian Data Analysis for Cognitive Science [Pehme köide]

(Department of Cognitive Science and Artificial Intelligence at Tilburg University in the Netherlands), (Cognitive psychologist and Professor of Quantitative Methods at the HMU Health and Medical University in Potsdam, Germany), (Profe)
  • Formaat: Paperback / softback, 616 pages, kõrgus x laius: 254x178 mm, kaal: 453 g, 17 Tables, black and white; 142 Line drawings, black and white; 9 Halftones, black and white; 151 Illustrations, black and white
  • Sari: Chapman & Hall/CRC Statistics in the Social and Behavioral Sciences
  • Ilmumisaeg: 21-Aug-2025
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-10: 0367359332
  • ISBN-13: 9780367359331
Teised raamatud teemal:
  • Formaat: Paperback / softback, 616 pages, kõrgus x laius: 254x178 mm, kaal: 453 g, 17 Tables, black and white; 142 Line drawings, black and white; 9 Halftones, black and white; 151 Illustrations, black and white
  • Sari: Chapman & Hall/CRC Statistics in the Social and Behavioral Sciences
  • Ilmumisaeg: 21-Aug-2025
  • Kirjastus: Chapman & Hall/CRC
  • ISBN-10: 0367359332
  • ISBN-13: 9780367359331
Teised raamatud teemal:

This book introduces Bayesian data analysis and Bayesian cognitive modeling to students and researchers in cognitive science (e.g. linguistics, psycholinguistics, psychology, computer science) with a focus on modeling data from planned experiments. The book relies on the probabilistic programming language Stan and the R package brms.



This book introduces Bayesian data analysis and Bayesian cognitive modeling to students and researchers in cognitive science (e.g., linguistics, psycholinguistics, psychology, computer science), with a particular focus on modeling data from planned experiments. The book relies on the probabilistic programming language Stan and the R package brms, which is a front-end to Stan. The book only assumes that the reader is familiar with the statistical programming language R, and has basic high school exposure to pre-calculus mathematics; some of the important mathematical constructs needed for the book are introduced in the first chapter.

Through this book, the reader will be able to develop a practical ability to apply Bayesian modeling within their own field. The book begins with an informal introduction to foundational topics such as probability theory, and univariate and bi-/multivariate discrete and continuous random variables. Then, the application of Bayes' rule for statistical inference is introduced with several simple analytical examples that require no computing software; the main insight here is that the posterior distribution of a parameter is a compromise between the prior and the likelihood functions. The book then gradually builds up the regression framework using the brms package in R, ultimately leading to hierarchical regression modeling (aka the linear mixed model). Along the way, there is detailed discussion about the topic of prior selection, and developing a well-defined workflow. Later chapters introduce the Stan programming language, and cover advanced topics using practical examples: contrast coding, model comparison using Bayes factors and cross-validation, hierarchical models and reparameterization, defining custom distributions, measurement error models and meta-analysis, and finally, some examples of cognitive models: multinomial processing trees, finite mixture models, and accumulator models. Additional chapters, appendices, and exercises are provided as online materials and can be accessed here: https://github.com/bnicenboim/bayescogsci.

Preface About the Authors I Foundational ideas 1 Introduction 2
Introduction to Bayesian data analysis II Regression models with brms 3
Computational Bayesian data analysis 4 Bayesian regression models 5 Bayesian
hierarchical models 6 Contrast coding 7 Contrast coding with two predictor
variables III Advanced models with Stan 8 Introduction to the probabilistic
programming language Stan 9 Hierarchical models and reparameterization 10
Custom distributions in Stan IV Evidence synthesis and measurements with
error 11 Meta-analysis and measurement error models V Model comparison 12
Introduction to model comparison 13 Bayes factors 14 Cross-validation VI
Cognitive modeling with Stan 15 Introduction to cognitive modeling 16
Multinomial processing trees 17 Mixture models 18 A simple accumulator model
to account for choice response time 19 In closing References
Bruno Nicenboim is assistant professor in the department of Cognitive Science and Artificial Intelligence at Tilburg University in the Netherlands, working within the area of computational psycholinguistics.

Daniel J. Schad is a cognitive psychologist and is professor of Quantitative Methods at the HMU Health and Medical University in Potsdam, Germany.

Shravan Vasishth is professor of psycholinguistics at the department of Linguistics at the University of Potsdam, Germany; he is a chartered statistician (Royal Statistical Society, UK).