# Neural Dynamics of Social Cognition: A Single‐Trial Computational Analysis of Learning Under Uncertainty

**Authors:** Colleen E. Charlton, Daniel J. Hauke, Vladimir Litvak, Michelle Wobmann, Renate de Bock, Christina Andreou, Stefan Borgwardt, Volker Roth, Andreea O. Diaconescu

PMC · DOI: 10.1002/hbm.70433 · Human Brain Mapping · 2026-01-14

## TL;DR

This study explores how the brain processes others' intentions under uncertainty using EEG and Bayesian modeling, revealing neural mechanisms linked to social learning and mental health.

## Contribution

The study provides novel evidence linking hierarchical Bayesian inference in social learning to specific neural dynamics and psychosocial functioning.

## Key findings

- EEG amplitudes varied with task volatility, engaging regions like the fusiform gyrus and posterior cingulate cortex.
- Sensor-level EEG analyses confirmed a temporal sequence of prediction errors consistent with hierarchical Bayesian computations.
- Individual differences in these neural processes correlated with psychosocial functioning, suggesting relevance to mental health.

## Abstract

Understanding others' intentions amidst uncertainty is critical for effective social interactions, yet the neural mechanisms underlying this process are not fully understood. Here, we combined computational modeling and single‐trial EEG analysis to examine how the brain dynamically updates beliefs about others' intentions in volatile social contexts. A total of 43 healthy volunteers engaged in a deception‐free advice‐taking task, featuring alternating stable and volatile phases that systematically manipulated the reliability of an adviser's intentions. Using the hierarchical Gaussian filter (HGF), a Bayesian model of learning, we quantified trial‐by‐trial updates of participants' beliefs and their neural correlates. EEG amplitudes systematically varied according to task volatility, engaging neural regions associated with uncertainty processing such as the fusiform gyrus and posterior cingulate cortex. Sensor‐level EEG analyses confirmed a temporal sequence consistent with the hierarchical computations predicted by the HGF, whereby lower‐level prediction errors were processed earlier than higher‐order volatility‐related signals. Moreover, individual differences in these hierarchical neural processes correlated significantly with psychosocial functioning, suggesting that disruptions in Bayesian belief updating may underlie functional impairments in clinical populations. Collectively, our results reveal novel neural evidence for hierarchical Bayesian inference during social learning, highlighting its critical role in adaptive social behavior and potential relevance to mental health.

We apply a hierarchical Bayesian model to single‐trial EEG data from an advice‐taking task, demonstrating that EEG activity closely mirrors the predicted sequence of prediction errors and precision signals. Additionally, source‐localised activity in the fusiform gyrus and posterior cingulate cortex covaried with participants' psychosocial functioning.

## Full-text entities

- **Diseases:** functional impairments (MESH:D003072)

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12800744/full.md

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12800744/full.md

## References

83 references — full list in the complete paper: https://tomesphere.com/paper/PMC12800744/full.md

---
Source: https://tomesphere.com/paper/PMC12800744