{"id":1171627,"date":"2026-05-12T15:56:11","date_gmt":"2026-05-12T22:56:11","guid":{"rendered":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/multibreak-a-scalable-and-diverse-multi-turn-jailbreak-benchmark-for-evaluating-llm-safety\/"},"modified":"2026-05-19T09:25:49","modified_gmt":"2026-05-19T16:25:49","slug":"multibreak-a-scalable-and-diverse-multi-turn-jailbreak-benchmark-for-evaluating-llm-safety","status":"publish","type":"msr-research-item","link":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/multibreak-a-scalable-and-diverse-multi-turn-jailbreak-benchmark-for-evaluating-llm-safety\/","title":{"rendered":"MultiBreak: A Scalable and Diverse Multi-turn Jailbreak Benchmark for Evaluating LLM Safety"},"content":{"rendered":"<p>We present MultiBreak, a scalable and diverse multi-turn jailbreak benchmark to evaluate large language model (LLM) safety. Multi-turn jailbreaks mimic natural conversational settings, making them easier to bypass safety-aligned LLM than single-turn jailbreaks. Existing multi-turn benchmarks are limited in size or rely heavily on templates, which restrict their diversity. To address this gap, we unify a wide range of harmful jailbreak intents, and introduce an active learning pipeline for expanding high-quality multi-turn adversarial prompts, where a generator is iteratively fine-tuned to produce stronger attack candidates, guided by uncertainty-based refinement. Our MultiBreak includes 10,389 multi-turn adversarial prompts, spans 2,665 distinct harmful intents, and covers the most diverse set of topics to date. Empirical evaluation shows that our benchmark achieves up to a 54.0 and 34.6 higher attack success rate (ASR)} than the second-best dataset on DeepSeek-R1-7B and GPT-4.1-mini, respectively. More importantly, safety evaluations suggest that diverse attack categories uncover fine-grained LLM vulnerabilities}, and categories that appear benign under single-turn can exhibit substantially higher adversarial effectiveness in multi-turn scenarios. These findings highlight persistent vulnerabilities of LLMs under realistic adversarial settings and establish MultiBreak as a scalable resource for advancing LLM safety.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>We present MultiBreak, a scalable and diverse multi-turn jailbreak benchmark to evaluate large language model (LLM) safety. Multi-turn jailbreaks mimic natural conversational settings, making them easier to bypass safety-aligned LLM than single-turn jailbreaks. Existing multi-turn benchmarks are limited in size or rely heavily on templates, which restrict their diversity. To address this gap, we unify 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