Analysis Of Linguistic Stereotypes in Single and Multi-Agent Generative AI Architectures
arXiv cs.AI / 3/20/2026
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Key Points
- The study replicates dialect-sensitive stereotype generation (SAE vs AAE) in LLM outputs and evaluates mitigation strategies including prompt engineering and multi-agent architectures (generate-critique-revise).
- Results show stereotype-bearing differences across SAE/AAE outputs across templates, with the strongest effects in adjective and job attributions and substantial model-level disparities.
- Chain-of-Thought prompting proves effective at mitigating bias for Claude Haiku, while multi-agent architectures provide consistent mitigation across all models tested.
- The authors advocate fairness evaluation that includes model-specific validation of mitigation strategies and workflow-level controls (e.g., agentic architectures) for high-impact deployments, noting the work is exploratory with potential extensions.
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