Incentive Salience

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Incentive Salience is an alternative to the Reward Prediction-Error Hypothesis of Dopamine, and possibly a better fit for parts of the data (Zhang et al. 2009), (Colombo 2014).

References

Colombo, Matteo. 2014. “Deep and Beautiful. The Reward Prediction Error Hypothesis of Dopamine.” Studies in History and Philosophy of Science Part c: Studies in History and Philosophy of Biological and Biomedical Sciences.
Zhang, Jun, Kent C. Berridge, Amy J. Tindell, Kyle S. Smith, and J. Wayne Aldridge. 2009. “A Neural Computational Model of Incentive Salience.” Plos Computational Biology. Public Library of Science.