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Rescorla-Wagner model : ウィキペディア英語版
Rescorla–Wagner model

The Rescorla–Wagner model is a model of classical conditioning in which the animal is said to learn from the discrepancy between what is expected to happen and what actually happens. This is a trial-level model in which each stimulus is either present or not present at some point in the trial. The prediction of the unconditioned stimulus for a trial can be represented as the sum of all the associative strengths for the conditioned stimuli present during the trial. This is the feature of the model that represents a major advance over previous models, and allowed a straightforward explanation of important experimental phenomena such as blocking. For this reason, the Rescorla–Wagner model has become one of the most influential models of learning, though it has been frequently criticized since its publication. It has attracted considerable attention in recent years, as many studies have suggested that the phasic activity of dopamine neurons in mesostriatal DA projections in the midbrain encodes for the type of prediction error detailed in the model.
The Rescorla–Wagner model was created by Robert A. Rescorla of the University of Pennsylvania and Allan R. Wagner of Yale University in 1972.
==Success and popularity==
The Rescorla–Wagner model has been successful and popular because:
#it can generate clear and ordinal predictions
#it has a number of successful predictions
#processing event representation by intensity and unexpectedness has an intuitive appeal
#it provides considerable heuristic value
#it has relatively few free parameters and independent variables
#it has had little competition from other theories

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
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