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From recurrent choice to skill learning: A reinforcement-learning model
Wai Tat Fu
, John R. Anderson
Siebel School of Computing and Data Science
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Keyphrases
Skill Learning
100%
Reinforcement Learning Model
100%
Action Sequence
25%
Basal Ganglia
25%
Behavior Learning
25%
Complex Skills
25%
Delayed Reinforcement
25%
Neurophysiological Studies
25%
Cognitive Architecture
25%
Reinforcement Probability
25%
Maze Learning
25%
Reinforcement Magnitude
25%
Multi-step Tasks
25%
Preference Reversal
25%
Differential Probability
25%
Reinforcement Learning Algorithm
25%
Differential Variation
25%
Goal Gradient
25%
Choice Behavior
25%
Differential Delay
25%
Psychology
Basal Ganglion
100%
Learning Model
100%