Non-parametric mixture modeling of cognitive psychological data: A new method to disentangle hidden strategies

Kim Archambeau*, Joaquina Couto, Leendert Van Maanen*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

In a wide variety of cognitive domains, participants have access to several alternative strategies to perform a particular task and, on each trial, one specific strategy is selected and executed. Determining how many strategies are used by a participant as well as their identification at a trial level is a challenging problem for researchers. In the current paper, we propose a new method - the non-parametric mixture model - to efficiently disentangle hidden strategies in cognitive psychological data, based on observed response times. The developed method derived from standard hidden Markov modeling. Importantly, we used a model-free approach where a particular shape of a response time distribution does not need to be assumed. This has the considerable advantage of avoiding potentially unreliable results when an inappropriate response time distribution is assumed. Through three simulation studies and two applications to real data, we repeatedly demonstrated that the non-parametric mixture model is able to reliably recover hidden strategies present in the data as well as to accurately estimate the number of concurrent strategies. The results also showed that this new method is more efficient than a standard parametric approach. The non-parametric mixture model is therefore a useful statistical tool for strategy identification that can be applied in many areas of cognitive psychology. To this end, practical guidelines are provided for researchers wishing to apply the non-parametric mixture models on their own data set.
Original languageEnglish
Pages (from-to)2232-2248
Number of pages17
JournalBehavior Research Methods
Volume55
Issue number5
Early online dateOct 2022
DOIs
Publication statusPublished - Aug 2023

Bibliographical note

Publisher Copyright:
© 2022, The Author(s).

Funding

No potential conflict of interest was reported by the authors. This work was supported by Amsterdam Brain and Cognition grant [grant number 05_PG18]. Data deposition: All data and scripts are publicly available on the Open Science Framework website at https://osf.io/24ydg/ . Supplementary information is made available online at https://osf.io/87qju .

FundersFunder number
Amsterdam Brain and Cognition05_PG18

    Keywords

    • Hidden Markov model
    • Mixture modeling
    • Non-parametric model
    • Strategy

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