Data di Pubblicazione:
2026
Abstract:
Automaticity plays a central role in facilitating higher-order cognitive processes by reducing demands on working memory.
Across three experiments, we examined how the quality and stability of automatized knowledge affect performance in
complex inductive reasoning tasks. Participants learned arbitrary symbol–meaning associations until they met predefined
accuracy and speed criteria. Experiment 1 showed that, once automatization was achieved, individual differences in
learning trajectories (e.g., number of trials or errors) no longer predicted performance in a symbol-based reasoning task.
Experiment 2 demonstrated the durability of automatization, as performance on a complex symbol recombination task
remained stable after a 30-day interval. Experiment 3 contrasted participants who learned symbol meanings accurately
but without speed (non-automatized group) with those who reached both accuracy and speed thresholds (automatized
group). Only the automatized group showed superior reasoning performance, particularly under increasing task complexity.
These findings provide converging evidence that automatized access to learned knowledge—defined by both accuracy
and speed—is essential for efficient complex reasoning, and highlight the cognitive cost of non-automatized retrieval even
when accuracy is high.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
Automaticity; Cognitive efficiency; Controlled processing; Inductive reasoning; Knowledge retrieval; Symbolic learning
Elenco autori:
Fabio, R. A.; Picciotto, G.; Suriano, R.
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