Visual confidence accurately tracks increasing internal noise with eccentricity in peripheral vision

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This study investigated whether perceptual confidence accurately reflects internal sensory noise when stimuli are presented in peripheral vision, using a normative Bayesian model and incentivized confidence measurements. Participants performed two tasks—spatial localization and orientation estimation—while stimulus eccentricity was varied to increase sensory noise, and confidence was measured via post-decision wagering that rewarded narrower ranges enclosing the target. The authors compared a Bayesian ideal-observer model, which derives confidence from posterior probabilities, against three alternative models, and found the Bayesian model best predicted confidence across both tasks. The paper’s limitation is that it assumes sensory noise increases linearly with eccentricity and evaluates models only within these specific tasks and confidence measurement scheme. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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Abstract Sensory representations are inherently noisy, and monitoring this noise is essential for effective decision-making. This metacognitive ability of evaluating the quality of one’s perceptual decision is referred to as perceptual confidence. However, whether perceptual confidence accurately tracks internal noise remains unresolved. Peripheral vision provides a natural testing ground for this question, yet previous studies report mixed results complicated by different definitions and measurements of confidence. Here, we used a normative Bayesian framework with incentivized confidence measurements to address these discrepancies. We tested the Bayesian-confidence hypothesis that confidence is derived from the posterior probability distribution of the feature being judged, given noisy sensory measurements. We tested two perceptual tasks while varying stimulus eccentricity: spatial localization and orientation estimation. We measured confidence by post-decision wagering, by which participants set a symmetrical range around the perceptual estimates. Participants earned higher reward for narrower confidence ranges but received zero reward if the range did not enclose the target. We estimated sensory noise from the perceptual responses to predict confidence, assuming that sensory noise linearly increases with eccentricity. We then compared a normative Bayesian model with three alternative models that challenged different assumptions. Across both tasks, the Bayesian ideal-observer model best predicted confidence. These results suggest that humans can accurately monitor the increased internal noise in peripheral vision and use this information to make optimal confidence judgments. Competing Interest Statement The authors have declared no competing interest.

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last seen: 2026-05-20T01:45:00.602351+00:00