11:00 - 12:30
Parallel sessions 2
11:00 - 12:30
Room: HSZ - N4
Chair/s:
Sebastian Hellmann
A feeling of confidence accompanies most of our decisions – whether we face uncertainty, evaluate risks and rewards, or make repeated choices over time. As research on metacognition expands beyond the domain of isolated perceptual judgments, computational models of confidence are increasingly being applied to dynamic and value-driven contexts, providing new insights into how people monitor and adjust their beliefs across decisions. This symposium brings together recent work that explores how confidence is formed, updated, and used in valuation and learning.

The session opens with Robin Vloeberghs who connects the first and second session with a critical perspective on the common assumption that individual decisions are independent. He demonstrates how fluctuations in internal decision criteria systematically influence confidence across repeated choices.
Second, Sebastian Hellmann, introduces a computational framework that integrates Cumulative Prospect Theory with an SDT–like confidence model, jointly capturing risky decision making and metacognitive evaluation, thereby connecting valuation under uncertainty with the principles highlighted across the other talks.
Going from description to learning risky outcomes, Rebecca West uses computational modelling to examine how people monitor their uncertainty when generalizing knowledge from learned risky options to unfamiliar ones. She investigates the strategies people use to infer the mean and variance of unknown payoff distributions through similarity-based generalisation, and how they track their own uncertainty in making these inferences.
Mean and variability are also key aspects of the context in many other learning paradigms. Alexandre Lietard investigates how confidence adapts to such environmental changes in value-based learning, showing that participants’ confidence increases with overall reward magnitudes—even when accuracy does not improve because of higher variability.
Going beyond classical reinforcement learning, Florian Scholten explores metacognition as certainty in attitude acquisition. By visualizing trajectories of confidence accompanying binary choices in evaluative probabilistic learning, he detects patterns of uncertainty reduction in forming positive and negative attitudes.
Together, the symposium compiles an integrative picture of how confidence is generated and updated across the domains of valuation, perception, and learning. By combining formal modeling with empirical data, this symposium highlights principles that link decision uncertainty, subjective confidence, and adaptive behavior within a unified computational framework.
Submission 355
Trial-by-Trial Fluctuations in Decision Criterion Shape Confidence
SymposiumTalk-01
Presented by: Robin Vloeberghs
Robin Vloeberghs 1, Lara Navarrete 1, Anne Urai 2, Kobe Desender 1
1 KU Leuven, Belgium
2 University of Leiden, Netherlands
Many of the choices we make are accompanied by a sense of confidence. Within classical Signal Detection Theory (SDT), confidence is conceptualized as the absolute distance between a decision variable and a decision criterion. The decision criterion is traditionally modelled as being stable over an experimental session. However, recent work challenges the notion of a static decision criterion, suggesting instead that the criterion undergoes trial-by-trial fluctuations. Combining SDT theory and model simulations, we predict that fluctuations in the decision criterion shape confidence. In 15 human decision-making datasets, trial-by-trial estimates of decision criterion were obtained with the Hierarchical Model for Fluctuations in Criterion (hMFC). Across all datasets, we confirmed our pre-registered hypothesis that confidence is shaped by single-trial criterion state. This effect was found in 14 out of 15 individual datasets, indicating a robust pattern across a variety of task paradigms and confidence reporting scales. Going beyond self-report, the shaping of confidence by criterion fluctuations was replicated in an implicit measure of confidence, RTs, and in two key neurophysiological markers, pupil-linked arousal and a neural signature of confidence. Our results demonstrate that variability in confidence, which has traditionally been treated as noise, actually reflects genuine sensitivity to the current state of the (fluctuating) decision criterion.