Analysis Of Linguistic Stereotypes in Single and Multi-Agent Generative AI Architectures
Martina Ullasci, Marco Rondina, Riccardo Coppola, Flavio Giobergia, Riccardo Bellanca, Gabriele Mancari Pasi, Luca Prato, Federico Spinoso, Silvia Tagliente

TL;DR
This study examines dialect-based stereotypes in LLM outputs, evaluates mitigation strategies like prompt engineering and multi-agent architectures, and finds that these methods can reduce bias, with effectiveness varying across models.
Contribution
It replicates stereotype analysis in LLMs, compares mitigation strategies, and demonstrates the effectiveness of multi-agent architectures in reducing dialect bias.
Findings
Stereotype differences are consistent across dialects and templates.
Chain-Of-Thought prompting reduces bias in some models.
Multi-agent architectures provide more consistent bias mitigation.
Abstract
Many works in the literature show that LLM outputs exhibit discriminatory behaviour, triggering stereotype-based inferences based on the dialect in which the inputs are written. This bias has been shown to be particularly pronounced when the same inputs are provided to LLMs in Standard American English (SAE) and African-American English (AAE). In this paper, we replicate existing analyses of dialect-sensitive stereotype generation in LLM outputs and investigate the effects of mitigation strategies, including prompt engineering (role-based and Chain-Of-Thought prompting) and multi-agent architectures composed of generate-critique-revise models. We define eight prompt templates to analyse different ways in which dialect bias can manifest, such as suggested names, jobs, and adjectives for SAE or AAE speakers. We use an LLM-as-judge approach to evaluate the bias in the results. Our results…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Language and cultural evolution
