| Literature DB >> 24968776 |
Quentin J M Huys1, Philippe N Tobler2, Gregor Hasler3, Shelly B Flagel4.
Abstract
Dopaminergic signals play a mathematically precise role in reward-related learning, and variations in dopaminergic signaling have been implicated in vulnerability to addiction. Here, we provide a detailed overview of the relationship between theoretical, mathematical, and experimental accounts of phasic dopamine signaling, with implications for the role of learning-related dopamine signaling in addiction and related disorders. We describe the theoretical and behavioral characteristics of model-free learning based on errors in the prediction of reward, including step-by-step explanations of the underlying equations. We then use recent insights from an animal model that highlights individual variation in learning during a Pavlovian conditioning paradigm to describe overlapping aspects of incentive salience attribution and model-free learning. We argue that this provides a computationally coherent account of some features of addiction.Entities:
Keywords: addiction; dopamine; incentive salience; model-free; prediction error; reinforcement learning; sign-tracking
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Year: 2014 PMID: 24968776 DOI: 10.1016/B978-0-444-63425-2.00003-9
Source DB: PubMed Journal: Prog Brain Res ISSN: 0079-6123 Impact factor: 2.453