Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Evolving Jailbreaks: Automated Multi-Objective Long-Tail Attacks on Large Language Models

About

Large Language Models (LLMs) have been widely deployed, especially through free Web-based applications that expose them to diverse user-generated inputs, including those from long-tail distributions such as low-resource languages and encrypted private data. This open-ended exposure increases the risk of jailbreak attacks that undermine model safety alignment. While recent studies have shown that leveraging long-tail distributions can facilitate such jailbreaks, existing approaches largely rely on handcrafted rules, limiting the systematic evaluation of these security and privacy vulnerabilities. In this work, we present EvoJail, an automated framework for discovering long-tail distribution attacks via multi-objective evolutionary search. EvoJail formulates long-tail attack prompt generation as a multi-objective optimization problem that jointly maximizes attack effectiveness and minimizes output perplexity, and introduces a semantic-algorithmic solution representation to capture both high-level semantic intent and low-level structural transformations of encryption-decryption logic. Building upon this representation, EvoJail integrates LLM-assisted operators into a multi-objective evolutionary framework, enabling adaptive and semantically informed mutation and crossover for efficiently exploring a highly structured and open-ended search space. Extensive experiments demonstrate that EvoJail consistently discovers diverse and effective long-tail jailbreak strategies, achieving competitive performance with existing methods in both individual and ensemble level.

Wenjing Hong, Zhonghua Rong, Li Wang, Feng Chang, Jian Zhu, Ke Tang, Zexuan Zhu, Yew-Soon Ong• 2026

Related benchmarks

TaskDatasetResultRank
LLM JailbreakingGPTFuzzer Scenario G1
Hypervolume0.708
21
LLM JailbreakingGPTFuzzer Scenario G2
Hypervolume77
21
LLM JailbreakingGPTFuzzer Scenario G3
Hypervolume0.696
21
LLM JailbreakingJBB-Behaviors Scenario J1
Hypervolume59.1
21
LLM JailbreakingJBB-Behaviors Scenario J2
Hypervolume0.691
21
LLM JailbreakingJBB-Behaviors Scenario J3
Hypervolume0.707
21
Jailbreak AttackLLaMA-7B-G (unseen instances)
Hypervolume76.2
7
Jailbreak AttackLLaMA-7B-J unseen instances
Hypervolume0.709
7
Jailbreak AttackLLaMA-8B-G unseen instances
Hypervolume79
7
Jailbreak AttackLLaMA-8B-J unseen instances
Hypervolume0.756
7
Showing 10 of 12 rows

Other info

Follow for update