Modeling Across-Trial Variability in the Wald Drift Rate Parameter
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| Publication date | 06-2021 |
| Journal | Behavior Research Methods |
| Volume | Issue number | 53 | 3 |
| Pages (from-to) | 1060–1076 |
| Number of pages | 17 |
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| Abstract |
The shifted-Wald model is a popular analysis tool for one-choice reaction-time tasks. In its simplest version, the shifted-Wald model assumes a constant trial-independent drift rate parameter. However, the presence of endogenous processes—fluctuation in attention and motivation, fatigue and boredom—suggest that drift rate might vary across experimental trials. Here we show how across-trial variability in drift rate can be accounted for by assuming a trial-specific drift rate parameter that is governed by a positive-valued distribution. We consider two candidate distributions: the truncated normal distribution and the gamma distribution. For the resulting distributions of first-arrival times, we derive analytical and sampling-based solutions, and implement the models in a Bayesian framework. Recovery studies and an application to a data set comprised of 1469 participants suggest that (1) both mixture distributions yield similar results; (2) all model parameters can be recovered accurately except for the drift variance parameter; (3) despite poor recovery, the presence of the drift variance parameter facilitates accurate recovery of the remaining parameters; (4) shift, threshold, and drift mean parameters are correlated.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.3758/s13428-020-01448-7 |
| Other links | https://osf.io/av4qn/ |
| Downloads |
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