Bayesian and maximum likelihood estimation of hierarchical response time models |
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Authors: | Simon Farrell Casimir J. H. Ludwig |
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Affiliation: | 1. Department of Experimental Psychology, University of Bristol, 12a Priory Road, Clifton, BS8 1TU, Bristol, U.K.
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Abstract: | Hierarchical (or multilevel) statistical models have become increasingly popular in psychology in the last few years. In this article, we consider the application of multilevel modeling to the ex-Gaussian, a popular model of response times. We compare single-level and hierarchical methods for estimation of the parameters of ex-Gaussian distributions. In addition, for each approach, we compare maximum likelihood estimation with Bayesian estimation. A set of simulations and analyses of parameter recovery show that although all methods perform adequately well, hierarchical methods are better able to recover the parameters of the ex-Gaussian, by reducing variability in the recovered parameters. At each level, little overall difference was observed between the maximum likelihood and Bayesian methods. |
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