The assumption in some current theories of probabilistic categorization is that people gradually attenuate their learning in response to unavoidable error. However, existing evidence for this error discounting is sparse and open to alternative interpretations. We report 2 probabilistic–categorization experiments in which we investigated error discounting by shifting feedback probabilities to new values after different amounts of training. In both experiments, responding gradually became less responsive to errors, and learning was slowed for some time after the feedback shift. Both results were indicative of error discounting. Quantitative modeling of the data revealed that adding a mechanism for error discounting significantly improved the ...
In this study, 38 young adults participated in a probabilistic A/B prototype category learning task ...
The "Weather Prediction" task is a widely used task for investigating probabilistic category learnin...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Error discounting 2 Craig, Lewandowsky, and Little (in press) used computational simulations to expl...
Despite the fact that categories are often composed of correlated features, the evidence that people...
cues are probabilistically (but not perfectly) predictive of class membership. This means that a giv...
Many category learning experiments use supervised learning (i.e., trial-by-trial feedback). Most of ...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
Many theories of category learning assume that learning is driven by a need to minimize classificati...
In probabilistic categorization tasks, various cues are probabilistically (but not perfectly) predic...
Models of category learning often assume that exemplar features are learned in proportion to how muc...
Recent work has demonstrated robust learning traps during learning from experience – decision-making...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
People give subadditive probability judgments--in violation of probability theory--when asked to ass...
© 2018, Psychonomic Society, Inc. Learning difficulty orderings for categorical stimuli have long pr...
In this study, 38 young adults participated in a probabilistic A/B prototype category learning task ...
The "Weather Prediction" task is a widely used task for investigating probabilistic category learnin...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Error discounting 2 Craig, Lewandowsky, and Little (in press) used computational simulations to expl...
Despite the fact that categories are often composed of correlated features, the evidence that people...
cues are probabilistically (but not perfectly) predictive of class membership. This means that a giv...
Many category learning experiments use supervised learning (i.e., trial-by-trial feedback). Most of ...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
Many theories of category learning assume that learning is driven by a need to minimize classificati...
In probabilistic categorization tasks, various cues are probabilistically (but not perfectly) predic...
Models of category learning often assume that exemplar features are learned in proportion to how muc...
Recent work has demonstrated robust learning traps during learning from experience – decision-making...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
People give subadditive probability judgments--in violation of probability theory--when asked to ass...
© 2018, Psychonomic Society, Inc. Learning difficulty orderings for categorical stimuli have long pr...
In this study, 38 young adults participated in a probabilistic A/B prototype category learning task ...
The "Weather Prediction" task is a widely used task for investigating probabilistic category learnin...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...