We present a computational model to explain the results from experiments in which subjects estimate the hidden probability parameter of a stepwise nonstationary Bernoulli process outcome by outcome. The model captures the following results qualitatively and quantitatively, with only 2 free parameters: (a) Subjects do not update their estimate after each outcome; they step from one estimate to another at irregular intervals. (b) The joint distribution of step widths and heights cannot be explained on the assumption that a threshold amount of change must be exceeded in order for them to indicate a change in their perception. (c) The mapping of observed probability to the median perceived probability is the identity function over the full rang...
We report on six experiments studying participants’ predictions of the next outcome in a sequence of...
We describe a computational model of two central aspects of people’s probabilistic reasoning: descr...
In virtually every activity we engage in — from analyzing economic trends, to predicting which of tw...
We present a computational model to explain the results from experiments in which subjects estimate ...
We present a computational model to explain the results from experiments in which subjects estimate ...
Hyman Minsky’s Financial Instability Hypothesis (Minsky, 1977) proposes that cyclicality in the fina...
A common view in current psychology is that people estimate probabilities using various 'heuristics'...
Extensive research in the behavioral sciences has addressed people’s ability to learn stationary pro...
International audienceThe brain constantly infers the causes of the inputs it receives and uses thes...
Nick Shea’s Representation in Cognitive Science commits him to representations in perceptu...
a b s t r a c t When required to predict sequential events, such as random coin tosses or basketball...
We report on six experiments studying participants’ predictions of the next outcome in a sequence of...
<div><p>There is accumulating evidence that prior knowledge about expectations plays an important ro...
Optimal sensory decision-making requires the combination of uncertain sensory signals with prior exp...
We report on six experiments studying participants’ predictions of the next outcome in a sequence of...
We describe a computational model of two central aspects of people’s probabilistic reasoning: descr...
In virtually every activity we engage in — from analyzing economic trends, to predicting which of tw...
We present a computational model to explain the results from experiments in which subjects estimate ...
We present a computational model to explain the results from experiments in which subjects estimate ...
Hyman Minsky’s Financial Instability Hypothesis (Minsky, 1977) proposes that cyclicality in the fina...
A common view in current psychology is that people estimate probabilities using various 'heuristics'...
Extensive research in the behavioral sciences has addressed people’s ability to learn stationary pro...
International audienceThe brain constantly infers the causes of the inputs it receives and uses thes...
Nick Shea’s Representation in Cognitive Science commits him to representations in perceptu...
a b s t r a c t When required to predict sequential events, such as random coin tosses or basketball...
We report on six experiments studying participants’ predictions of the next outcome in a sequence of...
<div><p>There is accumulating evidence that prior knowledge about expectations plays an important ro...
Optimal sensory decision-making requires the combination of uncertain sensory signals with prior exp...
We report on six experiments studying participants’ predictions of the next outcome in a sequence of...
We describe a computational model of two central aspects of people’s probabilistic reasoning: descr...
In virtually every activity we engage in — from analyzing economic trends, to predicting which of tw...