Realistic threat perception drives intergroup conflict: A causal, dynamic analysis using generative-agent simulations

Explainable & Ethical AI
Published: arXiv: 2512.17066v1
Authors

Suhaib Abdurahman Farzan Karimi-Malekabadi Chenxiao Yu Nour S. Kteily Morteza Dehghani

Abstract

Human conflict is often attributed to threats against material conditions and symbolic values, yet it remains unclear how they interact and which dominates. Progress is limited by weak causal control, ethical constraints, and scarce temporal data. We address these barriers using simulations of large language model (LLM)-driven agents in virtual societies, independently varying realistic and symbolic threat while tracking actions, language, and attitudes. Representational analyses show that the underlying LLM encodes realistic threat, symbolic threat, and hostility as distinct internal states, that our manipulations map onto them, and that steering these states causally shifts behavior. Our simulations provide a causal account of threat-driven conflict over time: realistic threat directly increases hostility, whereas symbolic threat effects are weaker, fully mediated by ingroup bias, and increase hostility only when realistic threat is absent. Non-hostile intergroup contact buffers escalation, and structural asymmetries concentrate hostility among majority groups.

Paper Summary

Problem
Human conflict is a complex issue that has been studied across various disciplines, including psychology, political science, and sociology. However, it remains unclear how realistic threats (e.g., threats to material conditions) and symbolic threats (e.g., threats to identity or sacred values) interact and drive group conflict. This lack of understanding makes it difficult to predict and prevent real-world escalation.
Key Innovation
This research paper addresses the problem by using generative-agent simulations, which involve autonomous agents powered by large language models (LLMs) that interact and converse in a shared environment. This approach allows researchers to study complex social dynamics without pre-specified decision rules, providing new insights into how realistic and symbolic threats drive group conflict.
Practical Impact
The findings of this research have several practical implications. Firstly, they suggest that realistic threat perception is the most reliable driver of hostile behavior. Secondly, they show that hateful language is a transient reaction to perceived threat and does not itself propagate hostility. Finally, they highlight the importance of structural context in shaping the distribution of hostility, concentrating it in dominant groups.
Analogy / Intuitive Explanation
Imagine a community where some people are concerned about the availability of resources (realistic threat) and others are worried about their cultural identity (symbolic threat). The research suggests that when realistic threats are present, they tend to dominate and drive hostility, while symbolic threats can only contribute to hostility when realistic threats are absent. This is like a seesaw, where realistic threats are the heavier weight that tips the balance towards hostility.
Paper Information
Categories:
cs.AI
Published Date:

arXiv ID:

2512.17066v1

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