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Using finite mixture of GLMs to explore variability in children's flexibility in a task-switching paradigm
Authors:Bruno Dauvier  Nicolas Chevalier  Agnès Blaye
Institution:1. Centre PSYCLE, Aix-Marseille Université, Aix-en-Provence, France;2. Institute of Cognitive Science, University of Colorado Boulder, Boulder, CO 80309-0345, United States;3. Laboratoire de Psychologie Cognitive, CNRS and Aix-Marseille Université, Marseille, France
Abstract:The present study illustrates the usefulness of finite mixture of generalized linear models (GLMs) to examine variability in cognitive strategies during childhood. More precisely, it addresses this variability in set-shifting situations where task-goal updating is endogenously driven. In a task-switching paradigm 5–6-year-olds had to switch between color- and shape-matching rules as a function of a predetermined, predictable task sequence. A finite mixture of GLMs was fitted to explore individual differences in performance. The statistical model revealed five response profiles, defined by accuracy and response times. These response profiles likely correspond to different cognitive strategies with varying efficiency and differential relations to working memory capacity (assessed by backward digit span). These results illustrate the heuristic value of statistical modeling to reveal the behavioral and cognitive variability in the temporal dynamics of children's cognitive functioning.
Keywords:Finite mixture model  Generalized linear mixed model  Latent class model  Task switching  Executive control  Cognitive strategies  Intra-individual variability  Inter-individual variability
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