Multi-Agent Consensus as a Cognitive Bias Trigger in Human-AI Interaction
TLDR
Multi-agent AI consensus can trigger cognitive biases like social proof and bandwagon effects, accelerating opinion change and inflating user confidence.
Key contributions
- Experiment (N=127) tested Majority, Minority, and Diffusion multi-agent AI configurations.
- Majority consensus in multi-agent AI accelerates opinion change and inflates user confidence.
- Minority dissent slows opinion change, promoting more deliberative user engagement.
- Agent agreement structure, independent of content, acts as a bias signal in LLM interactions.
Why it matters
This paper highlights how multi-agent AI systems can inadvertently trigger cognitive biases in users through their consensus structures. Understanding these social dynamics is crucial for designing more trustworthy and less manipulative human-AI interactions.
Original Abstract
As multi-agent AI systems become more common, users increasingly encounter not a single AI voice but a collective one. This shift introduces social dynamics, such as consensus, dissent, and gradual convergence, that can trigger cognitive biases and distort human judgment. We present findings from a controlled experiment (N = 127) comparing three multi-agent configurations: Majority, Minority, and Diffusion. Quantitative results show that majority consensus accelerates opinion change and inflates confidence, consistent with social proof and bandwagon heuristics. Minority dissent slows this process and promotes more deliberative engagement. Qualitative analysis identifies three interpretive trajectories: reinforcing, aligning, and oscillating, shaped by how users interpret agent independence and group dynamics over time. These findings suggest that agent agreement structure, independent of content, functions as a bias-relevant signal in LLM interactions. We hope this work contributes to the Bias4Trust agenda by grounding multi-agent social influence as a concrete and designable source of bias in human-AI interaction.
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