Computational modeling of cognition allows latent psychological variables to be measured by means of adjustable model parameters. The estimation and interpretation of the parameters are impaired, however, if parameters are strongly intercorrelated within the model. We point out that strong parameter interdependencies are especially likely to emerge in models that combine a subjective value function with a probabilistic choice rule-a common structure in the literature. We trace structural parameter interdependencies between value function and choice rule parameters across several prominent computational models, including models on risky choice (cumulative prospect theory), categorization (the generalized context model), and memory (the SIMPL...
While the representational theory of mind is without doubt one of the central theoretical underpinni...
We survey the utility and function of mathematical and computational models in cognitive science by ...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
Computational modeling of cognition allows latent psychological variables to be measured by means of...
In the behavioral sciences, a popular approach to describe and predict behavior is cognitive modelin...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
The rise of computational modeling in the past decade has led to a substantial increase in the numbe...
Abstract To be useful, cognitive models with fitted parame-ters should show generalizability across ...
Parametric cognitive models are increasingly popular tools for analyzing data obtained from psycholo...
Parametric cognitive models are increasingly popular tools for analyzing data obtained from psycholo...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
Behaviorally, regret-based choice models implicitly assume that individuals anticipate the amount of...
Cognitive alterations have long been reported in patients with mental health disorders, though with ...
<p>(<i>A</i>) Bayesian Information Criterion scores for each model (a low score is better). Models b...
While the representational theory of mind is without doubt one of the central theoretical underpinni...
We survey the utility and function of mathematical and computational models in cognitive science by ...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
Computational modeling of cognition allows latent psychological variables to be measured by means of...
In the behavioral sciences, a popular approach to describe and predict behavior is cognitive modelin...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
The rise of computational modeling in the past decade has led to a substantial increase in the numbe...
Abstract To be useful, cognitive models with fitted parame-ters should show generalizability across ...
Parametric cognitive models are increasingly popular tools for analyzing data obtained from psycholo...
Parametric cognitive models are increasingly popular tools for analyzing data obtained from psycholo...
Many evaluations of cognitive models rely on data that have been averaged or aggregated across all e...
Behaviorally, regret-based choice models implicitly assume that individuals anticipate the amount of...
Cognitive alterations have long been reported in patients with mental health disorders, though with ...
<p>(<i>A</i>) Bayesian Information Criterion scores for each model (a low score is better). Models b...
While the representational theory of mind is without doubt one of the central theoretical underpinni...
We survey the utility and function of mathematical and computational models in cognitive science by ...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...