Diversifying Toxicity Search in Large Language Models Through Speciation
Abstract
Evolutionary prompt search is a practical black-box approach for red teaming large language models, however existing methods often collapse onto a small family of high-performing prompts, limiting coverage of distinct failure modes. We present a speciated quality-diversity extension of \textit{ToxSearch} that maintains multiple high-toxicity prompt niches in parallel rather than optimizing a single best prompt. \textit{ToxSearch-S} introduces unsupervised prompt speciation via a search methodology that maintains capacity-limited species with exemplar leaders, a reserve pool for emerging niches, and species-aware parent selection that trades off within-niche exploitation and cross-niche exploration. Preliminary results show \textit{ToxSearch-S} reaching higher peak toxicity ( vs.\ ) with a heavier tail (top-10 median vs.\ ) than the baseline. Speciation also yields broader semantic coverage under a topics-as-species analysis (higher effective topic diversity and larger unique topic coverage). Finally, species formed are well-separated in embedding space (mean separation ratio ) and exhibit distinct toxicity distributions, indicating that speciation partitions the adversarial space into behaviorally differentiated niches rather than superficial lexical variants.
Cite
@article{arxiv.2601.20981,
title = {Diversifying Toxicity Search in Large Language Models Through Speciation},
author = {Onkar Shelar and Travis Desell},
journal= {arXiv preprint arXiv:2601.20981},
year = {2026}
}
Comments
Preprint. 4 pages, Accepted at GECCO as short paper