Published on 26 November 2021 |
Subjective confidence reflects representation of Bayesian probability in cortex
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What gives rise to the human sense of confidence? Here, we tested the Bayesian hypothesis that confidence is based on a probability distribution represented in neural population activity. We implemented several computational models of confidence, and tested their predictions using psychophysics and fMRI. Using a generative model-based fMRI decoding approach, we extracted probability distributions from neural population activity in human visual cortex. We found that subjective confidence tracks the shape of the decoded distribution. That is, when sensory evidence was more precise, as indicated by the decoded distribution, observers reported higher levels of confidence. We furthermore found that neural activity in the insula, anterior cingulate, and prefrontal cortex was linked to both the shape of the decoded distribution and reported confidence, in ways consistent with the Bayesian model. Altogether, our findings support recent statistical theories of confidence and suggest that probabilistic information guides the computation of one’s sense of confidence.
Citations (3)
Cited on 01 January 2026
Weight: 1.00
- https://doi.org/10.34973/e8v8-rd88DataCite
Cited on 06 November 2024
Weight: 1.46
- https://doi.org/10.1038/s41562-021-01247-wDataCite MDC
Cited on 20 January 2022
Weight: 1.23
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Publication Details
Subfield
Artificial Intelligence
Field
Computer Science
Domain
Physical Sciences
Confidence Score
63%
Source
Scholar Data Model