In multiple-cue learning (also known as probabilistic category learning) people acquire information about cue-outcome relations and combine these into predictions or judgments. Previous researchers claimed that people can achieve high levels of performance without explicit knowledge of the task structure or insight into their own judgment policies. It has also been argued that people use a variety of suboptimal strategies to solve such tasks. In three experiments the authors reexamined these conclusions by introducing novel measures of task knowledge and self-insight and using “rolling regression ” methods to analyze individual learning. Participants successfully learned a four-cue probabilistic environment and showed accurate knowledge of ...
We report two experiments in which participants are trained using a multicue probability learning (...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
This thesis is concerned with the problem of how people learn to use uncertain information for maki...
In two experiments, a multicue probability learning task was used to train participants in relating ...
Multiple-cue probability learning (MCPL) involves learning to predict a criterion when outcome feedb...
We frequently make predictions on the basis of a set of probabilistic cues—for instance, which team ...
Armelius, B-Å., and Armelius, K. Combination rules in multiple-cue probability learning. II. Perform...
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...
Three experiments employing a multiple cue probability learning situation were conducted to determin...
This thesis investigates the cognitive processes and representations underlying human judgment in a ...
This thesis investigates the cognitive processes and representations underlying human judgment in a ...
Armelius, B-Å., and Armelius, K. Combination rules in multiple cue probability learning I. Relation ...
This study was conducted in order to investigate the relationship between cognitive complexity, one ...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
We report two experiments in which participants are trained using a multicue probability learning (...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
This thesis is concerned with the problem of how people learn to use uncertain information for maki...
In two experiments, a multicue probability learning task was used to train participants in relating ...
Multiple-cue probability learning (MCPL) involves learning to predict a criterion when outcome feedb...
We frequently make predictions on the basis of a set of probabilistic cues—for instance, which team ...
Armelius, B-Å., and Armelius, K. Combination rules in multiple-cue probability learning. II. Perform...
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...
Three experiments employing a multiple cue probability learning situation were conducted to determin...
This thesis investigates the cognitive processes and representations underlying human judgment in a ...
This thesis investigates the cognitive processes and representations underlying human judgment in a ...
Armelius, B-Å., and Armelius, K. Combination rules in multiple cue probability learning I. Relation ...
This study was conducted in order to investigate the relationship between cognitive complexity, one ...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
We report two experiments in which participants are trained using a multicue probability learning (...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
This thesis is concerned with the problem of how people learn to use uncertain information for maki...