Bayesian Multilevel Models for Repeated Measures Data

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A01=Noah Silbert
A01=Santiago Barreda
Adult Male Speakers
advanced repeated measures modelling in R
Andrew Gelman
Apparent Age
Apparent Children
Apparent Gender
Apparent Height
Author_Noah Silbert
Author_Santiago Barreda
Bayesian
Bayesian Multilevel Models
bayesian statistics
brms package
categorical data
Categorical Predictors
Category=GPS
Category=JMA
Category=JMB
Category=KCH
Category=PBT
Credible Intervals
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
Estimate Est
experiemental design
FALSE FALSE
FALSE FALSE FALSE
FALSE FALSE FALSE FALSE FALSE
Fixed Effect Predictors
Fundamental Frequency
GitHub Page
Height Judgments
hierarchical modelling
Listener Effects
longitudinal data analysis
model building
model coefficients
Modeling
Multilevel modeling
multivariate
ordinal data
Population Level Effects
Posterior Samples
Quantitative Predictors
Random Effect Standard Deviations
random intercepts
regression
Speaker Category
Stan modelling
statistical inference methods
T-distributed Errors
Vocal Folds
VTL

Product details

  • ISBN 9781032259628
  • Weight: 1300g
  • Dimensions: 174 x 246mm
  • Publication Date: 18 May 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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This comprehensive book is an introduction to multilevel Bayesian models in R using brms and the Stan programming language. Featuring a series of fully worked analyses of repeated measures data, the focus is placed on active learning through the analyses of the progressively more complicated models presented throughout the book.

In this book, the authors offer an introduction to statistics entirely focused on repeated measures data beginning with very simple two-group comparisons and ending with multinomial regression models with many ‘random effects’. Across 13 well-structured chapters, readers are provided with all the code necessary to run all the analyses and make all the plots in the book, as well as useful examples of how to interpret and write up their own analyses.

This book provides an accessible introduction for readers in any field, with any level of statistical background. Senior undergraduate students, graduate students, and experienced researchers looking to ‘translate’ their skills with more traditional models to a Bayesian framework will benefit greatly from the lessons in this text.

Santiago Barreda is a phonetician in the Linguistics Department at the University of California, Davis, USA, with a particular interest in speech perception.

Noah Silbert is a former Academic and is currently a practicing Stoic. His training and background are in phonetics, perceptual modeling, and statistics.

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