<div><p>While previous studies have shown that human behavior adjusts in response to uncertainty, it is still not well understood how uncertainty is estimated and represented. As probability distributions are high dimensional objects, only constrained families of distributions with a low number of parameters can be specified from finite data. However, it is unknown what the structural assumptions are that the brain uses to estimate them. We introduce a novel paradigm that requires human participants of either sex to explicitly estimate the dispersion of a distribution over future observations. Judgments are based on a very small sample from a centered, normally distributed random variable that was suggested by the framing of the task. This ...
Humans and animals are able to solve a wide variety of perceptual, decision making and motor tasks w...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
What are the contents of working memory? In both behavioral and neural computational models, a worki...
While previous studies have shown that human behavior adjusts in response to uncertainty, it is stil...
While previous studies have shown that human behavior adjusts in response to uncertainty, it is stil...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
How does the brain represent the reliability of its sensory evidence? Here, we test whether sensory ...
We give a definition of human uncertainty through subjective likelihood estimates. The subject is as...
SummaryBackgroundUncertainty shapes our perception of the world and the decisions we make. Two aspec...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
Our immediate observations must be supplemented with contextual information to resolve ambiguities. ...
Author summary How do humans make prediction when the critical factor that influences the quality of...
Bayesian statistics defines how new information, given by a likelihood, should be combinedwith previ...
Behavioral and neuroimaging evidence shows that human decisions are sensitive to the statistical reg...
Humans and animals are able to solve a wide variety of perceptual, decision making and motor tasks w...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
What are the contents of working memory? In both behavioral and neural computational models, a worki...
While previous studies have shown that human behavior adjusts in response to uncertainty, it is stil...
While previous studies have shown that human behavior adjusts in response to uncertainty, it is stil...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
How does the brain represent the reliability of its sensory evidence? Here, we test whether sensory ...
We give a definition of human uncertainty through subjective likelihood estimates. The subject is as...
SummaryBackgroundUncertainty shapes our perception of the world and the decisions we make. Two aspec...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Adaptive decision making depends on an agent's ability to use environmental signals to reduce uncert...
Our immediate observations must be supplemented with contextual information to resolve ambiguities. ...
Author summary How do humans make prediction when the critical factor that influences the quality of...
Bayesian statistics defines how new information, given by a likelihood, should be combinedwith previ...
Behavioral and neuroimaging evidence shows that human decisions are sensitive to the statistical reg...
Humans and animals are able to solve a wide variety of perceptual, decision making and motor tasks w...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
What are the contents of working memory? In both behavioral and neural computational models, a worki...