| Literature DB >> 23813103 |
Patrick C Connor1, Vincent M Lolordo, Thomas P Trappenberg.
Abstract
When retrospective revaluation phenomena (e.g., unovershadowing: AB+, then A-, then test B) were discovered, simple elemental models were at a disadvantage because they could not explain such phenomena. Extensions of these models and novel models appealed to within-compound associations to accommodate these new data. Here, we present an elemental, neural network model of conditioning that explains retrospective revaluation apart from within-compound associations. In the model, previously paired stimuli (say, A and B, after AB+) come to activate similar ensembles of neurons, so that revaluation of one stimulus (A-) has the opposite effect on the other stimulus (B) through changes (decreases) in the strength of the inhibitory connections between neurons activated by B. The ventral striatum is discussed as a possible home for the structure and function of the present model.Entities:
Mesh:
Year: 2014 PMID: 23813103 DOI: 10.3758/s13420-013-0112-z
Source DB: PubMed Journal: Learn Behav ISSN: 1543-4494 Impact factor: 1.926