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Autori principali: Karri, Sai Suhruth Reddy, Nallapuneni, Yashwanth Sai, Mallireddy, Laxmi Narasimha Reddy, G, Gopichand
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.13202
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author Karri, Sai Suhruth Reddy
Nallapuneni, Yashwanth Sai
Mallireddy, Laxmi Narasimha Reddy
G, Gopichand
author_facet Karri, Sai Suhruth Reddy
Nallapuneni, Yashwanth Sai
Mallireddy, Laxmi Narasimha Reddy
G, Gopichand
contents Bias in AI systems, especially those relying on natural language data, raises ethical and practical concerns. Underrepresentation of certain groups often leads to uneven performance across demographics. Traditional fairness methods, such as pre-processing, in-processing, and post-processing, depend on protected-attribute labels, involve accuracy-fairness trade-offs, and may not generalize across datasets. To address these challenges, we propose LLM-Guided Synthetic Augmentation (LGSA), which uses large language models to generate counterfactual examples for underrepresented groups while preserving label integrity. We evaluated LGSA on a controlled dataset of short English sentences with gendered pronouns, professions, and binary classification labels. Structured prompts were used to produce gender-swapped paraphrases, followed by quality control including semantic similarity checks, attribute verification, toxicity screening, and human spot checks. The augmented dataset expanded training coverage and was used to train a classifier under consistent conditions. Results show that LGSA reduces performance disparities without compromising accuracy. The baseline model achieved 96.7 percent accuracy with a 7.2 percent gender bias gap. Simple swap augmentation reduced the gap to 0.7 percent but lowered accuracy to 95.6 percent. LGSA achieved 99.1 percent accuracy with a 1.9 percent bias gap, improving performance on female-labeled examples. These findings demonstrate that LGSA is an effective strategy for bias mitigation, enhancing subgroup balance while maintaining high task accuracy and label fidelity.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LLM-Guided Synthetic Augmentation (LGSA) for Mitigating Bias in AI Systems
Karri, Sai Suhruth Reddy
Nallapuneni, Yashwanth Sai
Mallireddy, Laxmi Narasimha Reddy
G, Gopichand
Computation and Language
Artificial Intelligence
Bias in AI systems, especially those relying on natural language data, raises ethical and practical concerns. Underrepresentation of certain groups often leads to uneven performance across demographics. Traditional fairness methods, such as pre-processing, in-processing, and post-processing, depend on protected-attribute labels, involve accuracy-fairness trade-offs, and may not generalize across datasets. To address these challenges, we propose LLM-Guided Synthetic Augmentation (LGSA), which uses large language models to generate counterfactual examples for underrepresented groups while preserving label integrity. We evaluated LGSA on a controlled dataset of short English sentences with gendered pronouns, professions, and binary classification labels. Structured prompts were used to produce gender-swapped paraphrases, followed by quality control including semantic similarity checks, attribute verification, toxicity screening, and human spot checks. The augmented dataset expanded training coverage and was used to train a classifier under consistent conditions. Results show that LGSA reduces performance disparities without compromising accuracy. The baseline model achieved 96.7 percent accuracy with a 7.2 percent gender bias gap. Simple swap augmentation reduced the gap to 0.7 percent but lowered accuracy to 95.6 percent. LGSA achieved 99.1 percent accuracy with a 1.9 percent bias gap, improving performance on female-labeled examples. These findings demonstrate that LGSA is an effective strategy for bias mitigation, enhancing subgroup balance while maintaining high task accuracy and label fidelity.
title LLM-Guided Synthetic Augmentation (LGSA) for Mitigating Bias in AI Systems
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2510.13202