A low-dimensional approximation of optimal confidence

Author:

Le Denmat PierreORCID,Verguts Tom,Desender Kobe

Abstract

Human decision making is accompanied by a sense of confidence. According to Bayesian decision theory, confidence reflects the learned probability of making a correct response, given available data (e.g., accumulated stimulus evidence and response time). Although optimal, independently learning these probabilities for all possible data combinations is computationally intractable. Here, we describe a novel model of confidence implementing a low-dimensional approximation of this optimal yet intractable solution. This model allows efficient estimation of confidence, while at the same time accounting for idiosyncrasies, different kinds of biases and deviation from the optimal probability correct. Our model dissociates confidence biases resulting from the estimate of the reliability of evidence by individuals (captured by parameter α), from confidence biases resulting from general stimulus independent under and overconfidence (captured by parameter β). We provide empirical evidence that this model accurately fits both choice data (accuracy, response time) and trial-by-trial confidence ratings simultaneously. Finally, we test and empirically validate two novel predictions of the model, namely that 1) changes in confidence can be independent of performance and 2) selectively manipulating each parameter of our model leads to distinct patterns of confidence judgments. As a tractable and flexible account of the computation of confidence, our model offers a clear framework to interpret and further resolve different forms of confidence biases.

Funder

KU Leuven

Fondation Francqui - Stichting

Fonds Wetenschappelijk Onderzoek

Publisher

Public Library of Science (PLoS)

Reference72 articles.

1. Signatures of a Statistical Computation in the Human Sense of Confidence;JI Sanders;Neuron,2016

2. Representation of Confidence Associated with a Decision by Neurons in the Parietal Cortex;R Kiani;Science,2009

3. Confidence as Bayesian Probability: From Neural Origins to Behavior;F Meyniel;Neuron,2015

4. Confidence modulates exploration and exploitation in value-based learning.;A Boldt;Neurosci Conscious. 2019 Jan 1,2019

5. Learning optimal decisions with confidence;J Drugowitsch;Proc Natl Acad Sci,2019

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