2017
DOI: 10.3389/fpsyg.2017.00244
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The Dopamine Prediction Error: Contributions to Associative Models of Reward Learning

Abstract: Phasic activity of midbrain dopamine neurons is currently thought to encapsulate the prediction-error signal described in Sutton and Barto’s (1981) model-free reinforcement learning algorithm. This phasic signal is thought to contain information about the quantitative value of reward, which transfers to the reward-predictive cue after learning. This is argued to endow the reward-predictive cue with the value inherent in the reward, motivating behavior toward cues signaling the presence of reward. Yet theoretic… Show more

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Cited by 78 publications
(75 citation statements)
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References 138 publications
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“…This novelty-sensitive network included clusters in dorsomedial PFC, dorsolateral PFC, and superior parietal lobule. Alternatively, exposure to previously learned pairs at test was accompanied by activation of vmPFC, which has been associated with attention to strong predictors (Sharpe and Killcross, 2015;Nasser et al, 2017), high confidence / high relative decision evidence (Schnyer, Nicholls, and Verfaille, 2005;Lebreton et al, 2015;Davis et al, 2017) and the application of familiar rules (Boettiger and D'Esposito, 2005). Thus the current mean BOLD activation results are in accordance with a number of recent studies examining decision-related processes in categorization.…”
Section: Cc-by-nc-ndsupporting
confidence: 89%
See 1 more Smart Citation
“…This novelty-sensitive network included clusters in dorsomedial PFC, dorsolateral PFC, and superior parietal lobule. Alternatively, exposure to previously learned pairs at test was accompanied by activation of vmPFC, which has been associated with attention to strong predictors (Sharpe and Killcross, 2015;Nasser et al, 2017), high confidence / high relative decision evidence (Schnyer, Nicholls, and Verfaille, 2005;Lebreton et al, 2015;Davis et al, 2017) and the application of familiar rules (Boettiger and D'Esposito, 2005). Thus the current mean BOLD activation results are in accordance with a number of recent studies examining decision-related processes in categorization.…”
Section: Cc-by-nc-ndsupporting
confidence: 89%
“…It is therefore possible that a rapid form of attention focusing on predictive utility was present during our experiment, with this effect being washed out by the subsequent effects of controlled attention on the ambiguous trials. Consistent with this idea, we found medial prefrontal regions associated with attention to strong predictors (Sharpe and Killcross, 2015;Nasser et al, 2017) to be engaged when participants encountered previously-. CC-BY-NC-ND 4.0 International license It is made available under a (which was not peer-reviewed) is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity.…”
Section: Cc-by-nc-ndsupporting
confidence: 77%
“…The role of DA teaching signals in value and identity learning remains unclear [16, 17]. Since the original discovery that they track changes in expected value, phasic dopamine signals have predominantly been interpreted as model-free RPEs, promoting pure value assignment.…”
Section: Introductionmentioning
confidence: 99%
“…In predictive coding, neuromodulation is proposed as computing part of the statistics of errors made by predictions (Lau, Monteiro, & Paton, 2017;Stephan, Iglesias, Heinzle, & Diaconescu, 2015). The bulk of empirical support for predictive coding lies in the domains of perception, reward learning, and decision making, as documented in humans, monkeys, and rodents (Diederen et al, 2017;Kok & de Lange, 2014;Leinweber, Ward, Sobczak, Attinger, & Keller, 2017;Markov et al, 2014;Nasser, Calu, Schoenbaum, & Sharpe, 2017;Summerfield, Trittschuh, Monti, Mesulam, & Egner, 2008;Wacongne et al, 2011), whereas the framework appears to be under exploration in memory consolidation (Cross, Kohler, Schlesewsky, Gaskell, & Bornkessel-Schlesewsky, 2018) and emotion (Barrett, 2017). Other general CNS frameworks worth mentioning are global workspace theory, which describes the basic circuit from which consciousness emerges (Baars, 2005), and liquid computing, which states that neural circuits have the capacity to store information of previous perturbation(s), analogous to the ripples generated on the surface of a pond when stones are thrown into it (Maass, Natschlager, & Markram, 2002).…”
Section: Contemporary Brain Theoriesmentioning
confidence: 99%