# Integration of affective cues in context-rich and dynamic scenes varies across individuals

**Authors:** Jefferson Ortega, Yuki Murai, David Whitney

PMC · DOI: 10.1038/s41467-025-67466-1 · 2025-12-16

## TL;DR

People combine facial expressions and context to judge emotions, using either a complex Bayesian strategy or a simpler averaging method.

## Contribution

The study reveals individual differences in how people integrate emotional cues using either Bayesian or heuristic strategies.

## Key findings

- Most observers use a Bayesian model to optimally weight emotional cues based on ambiguity.
- Some individuals rely on a simpler heuristic strategy that averages cues without considering ambiguity.
- Models with static weights or non-integration approaches fail to predict observers’ judgments.

## Abstract

Humans need to make rapid and accurate judgments of others’ emotions to understand and navigate the social world around them. To do so, humans combine multiple sources of emotional information from facial expressions and contextual information. However, it is not well understood how different sources of information are integrated, let alone how observers assess which signals should be combined. Across three studies (n = 944) using data from new and previously collected datasets, we investigate whether affective inferences follow a Bayesian framework where information is optimally weighted based on its ambiguity and then combined. We compare this model to a more parsimonious Heuristic integration model that averages cues without considering cue ambiguity. We find that the Bayesian model best predicts individual observers’ inferences of affect, but there are significant individual differences in integration strategies, with some individual observers adopting a Heuristic strategy. We also find that integration models that use stable weights instead of dynamic weights, as well as non-integration models, fail to predict observers’ affective judgments. Our findings suggest that there are significant idiosyncratic differences in how humans combine affective cues, where some observers use a Bayesian framework to weigh individual cues before integration, while others use efficient but less optimal strategies.

Here, the authors examine how people combine facial expressions and context to understand others’ emotions. They find that most people use a Bayesian integration strategy, where cues are weighted based on ambiguity, but others use more simplistic averaging strategies.

## Full-text entities

- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12824156/full.md

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Source: https://tomesphere.com/paper/PMC12824156