A note on the normality assumption for modeling constraint in cognitive individual differences

12/10/2021
by   Thomas J. Faulkenberry, et al.
0

To answer the question of "Does everybody...?" in the context of performance on cognitive tasks, Haaf and Rouder (2017) developed a class of hierarchical Bayesian mixed models with varying levels of constraint on the individual effects. The models are then compared via Bayes factors, telling us which model best predicts the observed data. One common criticism of their method is that the observed data are assumed to be drawn from a normal distribution. However, for most cognitive tasks, the primary measure of performance is a response time, the distribution of which is well known to not be normal. In this technical note, I investigate the assumption of normality for two datasets in numerical cognition. Specifically, I show that using a shifted lognormal model for the response times does not change the overall pattern of inference. Further, since the model-estimated effects are now on a logarithmic scale, the interpretation of the modeling becomes more difficult, particularly because the estimated effect is now multiplicative rather than additive. As a result, I recommend that even though response times are not normally distributed in general, the simplification afforded by the Haaf and Rouder (2017) approach provides a pragmatic approach to modeling individual differences in cognitive tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/23/2017

A hierarchical Bayesian model for measuring individual-level and group-level numerical representations

A popular method for indexing numerical representations is to compute an...
research
08/18/2020

A Note on the Sum of Non-Identically Distributed Doubly Truncated Normal Distributions

It is proved that the sum of n independent but non-identically distribut...
research
08/30/2022

Catalytic Priors: Using Synthetic Data to Specify Prior Distributions in Bayesian Analysis

Catalytic prior distributions provide general, easy-to-use and interpret...
research
03/21/2019

Variational Bayesian modelling of mixed-effects

This note is concerned with an accurate and computationally efficient va...
research
12/22/2020

Bayesian structural equation modeling for data from multiple cohorts

While it is well known that high levels of prenatal alcohol exposure (PA...
research
06/28/2019

Modeling Response Time Distributions with Generalized Beta Prime

We use Generalized Beta Prime distribution, also known as GB2, for fitti...
research
10/16/2019

Identifying relationships between cognitive processes across tasks, contexts, and time

It is commonly assumed that a specific testing occasion (task, design, p...

Please sign up or login with your details

Forgot password? Click here to reset