In probabilistic categorization, also known as multiple cue probability learning (MCPL), people learn to predict a discrete outcome on the basis of imperfectly valid cues. In MCPL, normatively irrelevant cues are usually ignored, which stands in apparent conflict with recent research in deterministic categorization that has shown that people sometimes use irrelevant cues to gate access to partial knowledge encapsu-lated in independent partitions. The authors report 2 experiments that sought support for the existence of such knowledge partitioning in probabilistic categorization. The results indicate that, as in other areas of concept acquisition (such as function learning and deterministic categorization), a significant proportion of partic...
We frequently make predictions on the basis of a set of probabilistic cues—for instance, which team ...
Recently it has been found that people that learn through in-ference create qualitatively different ...
Multiple-cue probability learning (MCPL) involves learning to predict a criterion when outcome feedb...
The knowledge partitioning framework holds that knowledge can be held in independent, mutually-exclu...
cues are probabilistically (but not perfectly) predictive of class membership. This means that a giv...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
In probabilistic categorization tasks, various cues are probabilistically (but not perfectly) predic...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
Despite the fact that categories are often composed of correlated features, the evidence that people...
In multiple-cue learning (also known as probabilistic category learning) people acquire information ...
The "Weather Prediction" task is a widely used task for investigating probabilistic category learnin...
How effective are different types of feedback in helping us to learn multiple contingencies? This ar...
In daily life, we make decisions that are associated with probabilistic outcomes (e.g., the chance o...
Many decisions have to be made on the basis of knowledge about correlational structures in the envir...
The assumption in some current theories of probabilistic categorization is that people gradually att...
We frequently make predictions on the basis of a set of probabilistic cues—for instance, which team ...
Recently it has been found that people that learn through in-ference create qualitatively different ...
Multiple-cue probability learning (MCPL) involves learning to predict a criterion when outcome feedb...
The knowledge partitioning framework holds that knowledge can be held in independent, mutually-exclu...
cues are probabilistically (but not perfectly) predictive of class membership. This means that a giv...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
In probabilistic categorization tasks, various cues are probabilistically (but not perfectly) predic...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
Despite the fact that categories are often composed of correlated features, the evidence that people...
In multiple-cue learning (also known as probabilistic category learning) people acquire information ...
The "Weather Prediction" task is a widely used task for investigating probabilistic category learnin...
How effective are different types of feedback in helping us to learn multiple contingencies? This ar...
In daily life, we make decisions that are associated with probabilistic outcomes (e.g., the chance o...
Many decisions have to be made on the basis of knowledge about correlational structures in the envir...
The assumption in some current theories of probabilistic categorization is that people gradually att...
We frequently make predictions on the basis of a set of probabilistic cues—for instance, which team ...
Recently it has been found that people that learn through in-ference create qualitatively different ...
Multiple-cue probability learning (MCPL) involves learning to predict a criterion when outcome feedb...