Why are human inferences sometimes remarkably close to the Bayesian ideal and other times systematically biased? One notable instance of this discrepancy is that tasks where the candidate hypotheses are explicitly available result in close to rational inference over the hypothesis space, whereas tasks requiring the self-generation of hypotheses produce systematic deviations from rational inference. We propose that these deviations arise from algorithmic processes approximating Bayes' rule. Specifically in our account, hypotheses are generated stochastically from a sampling process, such that the sampled hypotheses form a Monte Carlo approximation of the posterior. While this approximation will converge to the true posterior in the limit of ...
In this article, I will show how several observed biases in human probabilistic reasoning can be par...
Bayesian explanations have swept through cognitive science over the past two decades, from intuitive...
To make informed decisions in natural environments that change over time, humans must update their b...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian cognitive science sees the mind as a spectacular probabilistic inference machine. But Judgm...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2010....
When data are sampled from a population and subjects revise probability estimates about which popula...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
It has recently been shown that a Bayesian agent with a universal hypothesis class resolves most ind...
Many philosophers have claimed that Bayesianism can provide a simple justification for hypothetico-d...
Normative models of decision-making that optimally transform noisy (sensory) information into catego...
Scholars have recognized the benefits to science of Bayesian inference about the relative plausibili...
In this article, I will show how several observed biases in human probabilistic reasoning can be par...
Bayesian explanations have swept through cognitive science over the past two decades, from intuitive...
To make informed decisions in natural environments that change over time, humans must update their b...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian cognitive science sees the mind as a spectacular probabilistic inference machine. But Judgm...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2010....
When data are sampled from a population and subjects revise probability estimates about which popula...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
It has recently been shown that a Bayesian agent with a universal hypothesis class resolves most ind...
Many philosophers have claimed that Bayesianism can provide a simple justification for hypothetico-d...
Normative models of decision-making that optimally transform noisy (sensory) information into catego...
Scholars have recognized the benefits to science of Bayesian inference about the relative plausibili...
In this article, I will show how several observed biases in human probabilistic reasoning can be par...
Bayesian explanations have swept through cognitive science over the past two decades, from intuitive...
To make informed decisions in natural environments that change over time, humans must update their b...