A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric multiple-cue probability learning, wherein people learn to utilize a number of discrete-valued cues that are partially valid indicators of categorical outcomes. Phenomena accounted for include cue competition, effects of cue salience, utilization of configural information, decreased learning when information is introduced after a delay, and effects of base rates. Experiments 1 and 2 replicate previous experiments on cue competition and cue salience, and fits of the model provide parameter values for making qualitatively correct predictions for many other situations. The model also makes 2 new predictions, confirmed in Experiments 3 and 4. Th...
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...
In probabilistic category learning tasks, people learn incrementally the "probabilistic" a...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
About the book: Connectionist Models of Learning, Development and Evolution comprises a selection of...
In multiple-cue learning (also known as probabilistic category learning) people acquire information ...
12 Multiple-Cue Probability Learning (MCPL) is an experi-13 mental paradigm concerned with how well ...
People give subadditive probability judgments--in violation of probability theory--when asked to ass...
The knowledge partitioning framework holds that knowledge can be held in independent, mutually-exclu...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
How effective are different types of feedback in helping us to learn multiple contingencies? This ar...
Although learning from multiple representations has been shown to be effective in a variety of domai...
Cognitive science aims to reverse-engineer the mind, and many of the engineering challenges the mind...
A previously proposed model for memory based on neurophysiological considerations is reviewed. We as...
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...
In probabilistic category learning tasks, people learn incrementally the "probabilistic" a...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
In probabilistic categorization, also known as multiple cue probability learning (MCPL), people lear...
About the book: Connectionist Models of Learning, Development and Evolution comprises a selection of...
In multiple-cue learning (also known as probabilistic category learning) people acquire information ...
12 Multiple-Cue Probability Learning (MCPL) is an experi-13 mental paradigm concerned with how well ...
People give subadditive probability judgments--in violation of probability theory--when asked to ass...
The knowledge partitioning framework holds that knowledge can be held in independent, mutually-exclu...
This thesis examined the role of procedural learning in human probabilistic category learning (PCL)....
How effective are different types of feedback in helping us to learn multiple contingencies? This ar...
Although learning from multiple representations has been shown to be effective in a variety of domai...
Cognitive science aims to reverse-engineer the mind, and many of the engineering challenges the mind...
A previously proposed model for memory based on neurophysiological considerations is reviewed. We as...
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...
In probabilistic category learning tasks, people learn incrementally the "probabilistic" a...