Accumulating evidence indicates that the human brain copes with sensory uncertainty in accordance with Bayes’ rule. However, it is unknown how humans make predictions when the generative model of the task at hand is described by uncertain parameters. Here, we tested whether and how humans take parameter uncertainty into account in a regression task. Participants extrapolated a parabola from a limited number of noisy points, shown on a computer screen. The quadratic parameter was drawn from a bimodal prior distribution. We tested whether human observers take full advantage of the given information, including the likelihood of the quadratic parameter value given the observed points and the quadratic parameter’s prior distribution. We compared...
Many skills rely on performing noisy mental computations on noisy sensory measurements. Bayesian mod...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Normative models of decision-making that optimally transform noisy (sensory) information into catego...
Author summary How do humans make prediction when the critical factor that influences the quality of...
Humans can meaningfully report their confidence in a perceptual or cognitive decision. It is widely ...
Humans can meaningfully report their confidence in a perceptual or cognitive decision. It is widely ...
Optimal Bayesian models have been highly successful in describing human performance on perceptual de...
Optimal Bayesian models have been highly successful in describing human performance on perceptual de...
The application of Bayesian modeling techniques is increasingly common in neuroscience due to the co...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Bayesian models provide a principled way to deal with uncertainty. In cognitive tasks the uncertaint...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
Humans have been shown to combine noisy sensory information with previous experience (priors), in qu...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Many skills rely on performing noisy mental computations on noisy sensory measurements. Bayesian mod...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Normative models of decision-making that optimally transform noisy (sensory) information into catego...
Author summary How do humans make prediction when the critical factor that influences the quality of...
Humans can meaningfully report their confidence in a perceptual or cognitive decision. It is widely ...
Humans can meaningfully report their confidence in a perceptual or cognitive decision. It is widely ...
Optimal Bayesian models have been highly successful in describing human performance on perceptual de...
Optimal Bayesian models have been highly successful in describing human performance on perceptual de...
The application of Bayesian modeling techniques is increasingly common in neuroscience due to the co...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Bayesian models provide a principled way to deal with uncertainty. In cognitive tasks the uncertaint...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian models of cognition provide a powerful way to understand the behavior and goals of individu...
Humans have been shown to combine noisy sensory information with previous experience (priors), in qu...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Many skills rely on performing noisy mental computations on noisy sensory measurements. Bayesian mod...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Normative models of decision-making that optimally transform noisy (sensory) information into catego...