Probabilistic models of decision making under various forms of uncertainty have been applied in recent years to numerous behavioral and model-based fMRI studies. These studies were highly successful in enabling a better understanding of behavior and delineating the functional properties of brain areas involved in decision making under uncertainty. However, as different studies considered different models of decision making under uncertainty, it is unclear which of these computational models provides the best account of the observed behavioral and neuroimaging data. This is an important issue, as not performing model comparison may tempt researchers to over-interpret results based on a single model. Here we describe how in practice one can c...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Many experimental and statistical paradigms collect and analyze behavioral data under steady-state a...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Computational learning models are critical for understanding mechanisms of adaptive behavior. Howeve...
It is known that behavior is substantially variable even across nearly identical situations. Many co...
To function effectively, brains need to make predictions about their environment based on past exper...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
In its full sense, perception rests on an agent's model of how its sensory input comes about and the...
Adaptive behavior in even the simplest decision-making tasks requires predicting future events in an...
Maintaining appropriate beliefs about variables needed for effective decisionmaking can be difficult...
Adaptive decision making critically depends on agents’ ability to reduce uncertainty. To reduce unce...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
Behavioral data obtained with perceptual decision making experiments are typically analyzed with the...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Many experimental and statistical paradigms collect and analyze behavioral data under steady-state a...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...
Computational learning models are critical for understanding mechanisms of adaptive behavior. Howeve...
It is known that behavior is substantially variable even across nearly identical situations. Many co...
To function effectively, brains need to make predictions about their environment based on past exper...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
To be useful, cognitive models with fitted parameters should show generalizability across time and a...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
In its full sense, perception rests on an agent's model of how its sensory input comes about and the...
Adaptive behavior in even the simplest decision-making tasks requires predicting future events in an...
Maintaining appropriate beliefs about variables needed for effective decisionmaking can be difficult...
Adaptive decision making critically depends on agents’ ability to reduce uncertainty. To reduce unce...
From a computational perspective, the primary goal of cognitive science is to infer the influence of...
Behavioral data obtained with perceptual decision making experiments are typically analyzed with the...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Many experimental and statistical paradigms collect and analyze behavioral data under steady-state a...
Mathematical decision making theory has been successfully applied to the neuroscience of sensation, ...