English

Diversifying Toxicity Search in Large Language Models Through Speciation

Neural and Evolutionary Computing 2026-04-22 v2 Populations and Evolution

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 (0.73\approx 0.73 vs.\ 0.47\approx 0.47) with a heavier tail (top-10 median 0.660.66 vs.\ 0.450.45) 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 1.93\approx 1.93) and exhibit distinct toxicity distributions, indicating that speciation partitions the adversarial space into behaviorally differentiated niches rather than superficial lexical variants.

Keywords

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

R2 v1 2026-07-01T09:24:33.523Z