Extensive research in the behavioral sciences has addressed people’s ability to learn stationary probabilities, which stay constant over time, but only recently have there been attempts to model the cognitive processes whereby people learn—and track—nonstationary probabilities. In this context, the old debate on whether learning occurs by the gradual formation of associations or by occasional shifts between hypotheses representing beliefs about distal states of the world has resurfaced. Gallistel et al. (2014) pitched the two theories against each other in a nonstationary probability learning task. They concluded that various qualitative patterns in their data were incompatible with trial-by-trial associative learning and could only be expl...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Forming expectations about what we are likely to perceive often facilitates perception. We forge su...
We present a computational model to explain the results from experiments in which subjects estimate ...
Extensive research in the behavioral sciences has addressed people’s ability to learn stationary pro...
Hyman Minsky’s Financial Instability Hypothesis (Minsky, 1977) proposes that cyclicality in the fina...
When a cue reliably predicts an outcome, the associability of that cue will change. Associative theo...
We present a computational model to explain the results from experiments in which subjects estimate ...
The Associative Probability Theory asserts that the greater the number of associates elicited by a s...
Three experiments show that understanding of biases in probability judgment can be improved by exten...
Two important ideas about associative learning have emerged in recent decades: (1) Ani-mals are Baye...
When navigating an uncertain world, it is often necessary to judge the probability of a conjunction ...
Visual perception is strongly shaped by expectations, but it is poorly understood how such perceptua...
To navigate stochastic and changing environments, people need to keep track of ongoing probabilities...
Subjects display sensitivity to local patterns in stimulus history (sequential effects) in a variety...
Much of contemporary associative learning research is focused on understanding how and when the asso...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Forming expectations about what we are likely to perceive often facilitates perception. We forge su...
We present a computational model to explain the results from experiments in which subjects estimate ...
Extensive research in the behavioral sciences has addressed people’s ability to learn stationary pro...
Hyman Minsky’s Financial Instability Hypothesis (Minsky, 1977) proposes that cyclicality in the fina...
When a cue reliably predicts an outcome, the associability of that cue will change. Associative theo...
We present a computational model to explain the results from experiments in which subjects estimate ...
The Associative Probability Theory asserts that the greater the number of associates elicited by a s...
Three experiments show that understanding of biases in probability judgment can be improved by exten...
Two important ideas about associative learning have emerged in recent decades: (1) Ani-mals are Baye...
When navigating an uncertain world, it is often necessary to judge the probability of a conjunction ...
Visual perception is strongly shaped by expectations, but it is poorly understood how such perceptua...
To navigate stochastic and changing environments, people need to keep track of ongoing probabilities...
Subjects display sensitivity to local patterns in stimulus history (sequential effects) in a variety...
Much of contemporary associative learning research is focused on understanding how and when the asso...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Forming expectations about what we are likely to perceive often facilitates perception. We forge su...
We present a computational model to explain the results from experiments in which subjects estimate ...