A Bayesian Multilevel Model for the Psychometric Function using R and Stan

Loading...
Thumbnail Image

Authors

Knudson, Alexander

Issue Date

2020

Type

Thesis

Language

Keywords

Bayesian Statistics , GLM , Psychometrics , Stan

Research Projects

Organizational Units

Journal Issue

Alternative Title

Abstract

A common neuroscience topic is to determine the temporal order of two stimuli, and is often studied via a logistic model called a psychometric function. The data arises from repeated sampling of subjects across a variety of tasks (stimuli), blocks, and time separations. These studies are often interested in making inferences at the group level (age, gender, etc.) and at an individual level. This hierarchical nesting makes multilevel modeling a natural choice for these data. We describe a principled workflow for model development using domain expertise, regularizing priors, and posterior predictive performance to compare models. We then apply the workflow to produce a novel statistical model for temporal order judgment data by fitting a series of Bayesian models efficiently using Hamiltonian Monte Carlo (HMC) in the R programming language with Stan.

Description

Citation

Publisher

License

Creative Commons Attribution 4.0 United States

Journal

Volume

Issue

PubMed ID

DOI

ISSN

EISSN