Bayesian Item Response Modelling in R with brms and Stan

05/23/2019
by   Paul-Christian Bürkner, et al.
0

Item Response Theory (IRT) is widely applied in the human sciences to model persons' responses on a set of items measuring one or more latent constructs. While several R packages have been developed that implement IRT models, they tend to be restricted to respective prespecified classes of models. Further, most implementations are frequentist while the availability of Bayesian methods remains comparably limited. We demonstrate how to use the R package brms together with the probabilistic programming language Stan to specify and fit a wide range of Bayesian IRT models using flexible and intuitive multilevel formula syntax. Further, item and person parameters can be related in both a linear or non-linear manner. Various distributions for categorical, ordinal, and continuous responses are supported. Users may even define their own custom response distribution for use in the presented framework. Common IRT model classes that can be specified natively in the presented framework include 1PL and 2PL logistic models optionally also containing guessing parameters, graded response and partial credit ordinal models, as well as drift diffusion models of response times coupled with binary decisions. Posterior distributions of item and person parameters can be conveniently extracted and post-processed. Model fit can be evaluated and compared using Bayes factors and efficient cross-validation procedures.

READ FULL TEXT
research
10/03/2020

A Taxonomy of Polytomous Item Response Models

A common framework is provided that comprises classical ordinal item res...
research
10/15/2018

Measuring religious morality using very limited poll responses: Implementing "big-data analytics" to small data

Opinion polls remain among the most efficient and widespread methods to ...
research
03/16/2020

Bayesian item response models for citizen science ecological data

So-called citizen science data elicited from crowds has become increasin...
research
11/24/2022

Estimating Conditional Distributions with Neural Networks using R package deeptrafo

Contemporary empirical applications frequently require flexible regressi...
research
10/19/2020

Rater: An R Package for Fitting Statistical Models of Repeated Categorical Ratings

A common occurrence in many disciplines is the need to assign a set of i...
research
10/03/2020

Regularized Bayesian calibration and scoring of the WD-FAB IRT model improves predictive performance over maximum marginal likelihood

Item response theory (IRT) is the statistical paradigm underlying a domi...
research
03/17/2018

Optimal Designs for the Generalized Partial Credit Model

Analyzing ordinal data becomes increasingly important in psychology, esp...

Please sign up or login with your details

Forgot password? Click here to reset