A little goes a long way: Fitting one-shot decisions with cognitive models
Discuss this preprint
Start a discussion What are Sciety discussions?Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
Cognitive models provide profound insights into the psychological processes underlying behavior. However, a significant limitation has constrained their application: the reliance on extensive, repeated-trial data from each participant. The data-hungry nature of cognitive models has largely precluded their application to infrequent but consequential one-shot decisions common in economic, social, and clinical contexts, and has excluded populations unable to complete lengthy experiments. Here, we address this methodological constraint by proposing a conceptual shift: instead of requiring many trials from a few individuals, we leverage few trials from many individuals. By treating between-subject variability as a source of information, we demonstrate that cognitive models can be successfully fit to one-shot data. Through a series of simulations, we first establish that we can recover known parameter values from single-trial data. We then validate the approach empirically by showing that with only a single trial per participant it can replicate canonical findings; namely, the speed-accuracy trade-off, the influence of food quality and expectations on choice, and the task-specificity of linear vs. non-linear numeric representations. This work overcomes a major limitation to the widespread application of cognitive models, opening new frontiers for understanding the cognitive mechanisms of real-world choices.