2021
DOI: 10.31234/osf.io/k7w38
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SalemGarcia_2021

Abstract: We systematically misjudge our own performance in simple economic tasks. First, we generally overestimate our ability to make correct choices – a bias called overconfidence. Second, we are more confident in our choices when we seek gains than when we try to avoid losses – a bias we refer to as the valence-induced confidence bias. Strikingly, these two biases are also present in reinforcement-learning contexts, despite the fact that outcomes are provided trial-by-trial and could, in principle, be used to recali… Show more

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Cited by 3 publications
(3 citation statements)
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References 110 publications
(194 reference statements)
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“…Our main model-space included the standard Q-learning model (SQL), the reference-point model (RP) (Palminteri et al, 2015 ), the difference model (Klein et al, 2017 ), and the hybrid model (Bavard et al, 2018 ). The same analysis was also performed on the extended model-space which, in addition to the previously named models, included the forgetting reinforcement learning model (FQL) (Barraclough et al, 2004 ; Ito and Doya, 2009 ; Katahira, 2015 ; Niv et al, 2015 ; Kato and Morita, 2016 ), the experienced-weighted attraction model (EWA) (Camerer and Hua Ho, 1999 ), the sample-based episodic memory model (SBE) (Bornstein et al, 2017 ), and RelAsym model (Garcia et al, 2021 ; Ting et al, 2021 , Supplementary Tables 2–4 ).…”
Section: Resultsmentioning
confidence: 99%
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“…Our main model-space included the standard Q-learning model (SQL), the reference-point model (RP) (Palminteri et al, 2015 ), the difference model (Klein et al, 2017 ), and the hybrid model (Bavard et al, 2018 ). The same analysis was also performed on the extended model-space which, in addition to the previously named models, included the forgetting reinforcement learning model (FQL) (Barraclough et al, 2004 ; Ito and Doya, 2009 ; Katahira, 2015 ; Niv et al, 2015 ; Kato and Morita, 2016 ), the experienced-weighted attraction model (EWA) (Camerer and Hua Ho, 1999 ), the sample-based episodic memory model (SBE) (Bornstein et al, 2017 ), and RelAsym model (Garcia et al, 2021 ; Ting et al, 2021 , Supplementary Tables 2–4 ).…”
Section: Resultsmentioning
confidence: 99%
“…In this model, it is the asymmetric updating of positive and negative prediction errors that improves the performance by increasing the contrast between option values. Second, the RelAsym model (Garcia et al, 2021 ; Ting et al, 2021 ) which is the combination of the confirmation bias and reference point mechanisms. The RelAsym model by having these two factors, not only has the asymmetric updating advantage (performance advantage) but also is able to explain the contextual effect because of the reference point function it used in its mechanism.…”
Section: Discussionmentioning
confidence: 99%
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