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Designing state-trace experiments to assess the number of latent psychological variables underlying binary choices

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conference contribution
posted on 2025-05-10, 07:35 authored by Guy HawkinsGuy Hawkins, Melissa Prince, Scott BrownScott Brown, Andrew HeathcoteAndrew Heathcote
State-trace analysis is a non-parametric method that can identify the number of latent variables (dimensionality) required to explain the effect of two or more experimental factors on performance. Heathcote, Brown & Prince (submitted) recently proposed a Bayes Factor method for estimating the evidence favoring one or more than one latent variable in a state-trace experiment, known as Bayesian Ordinal Analysis of State-Traces (BOAST). We report results from a series of simulations indicating that for larger sample sizes BOAST performs well in identifying dimensionality for single and multiple latent variable models. A method of group analysis convenient for smaller sample sizes is presented with mixed results across experimental designs. We use the simulation results to provide guidance on designing state-trace experiments to maximize the probability of correct classification of dimensionality.

History

Source title

Cognition in Flux: Proceedings of the 32nd Annual Meeting of the Cognitive Science Society

Name of conference

32nd Annual Conference of the Cognitive Science Society (COGSCI 2010)

Location

Portland, OR

Start date

2010-08-11

End date

2010-08-14

Pagination

2224-2229

Publisher

Cognitive Science Society

Place published

Austin, TX

Language

  • en, English

College/Research Centre

Faculty of Science and Information Technology

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