MLJailDe achieves 98.5% F1 on multilingual jailbreak detection by combining back-translation data augmentation, supervised contrastive loss, and imbalance-aware classification on a DeBERTa backbone.
Artprompt: Ascii art-based jailbreak attacks against aligned llms,
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One Jailbreak, Many Tongues: Learning Language-Insensitive Intention Representations for Multilingual Jailbreak Detection
MLJailDe achieves 98.5% F1 on multilingual jailbreak detection by combining back-translation data augmentation, supervised contrastive loss, and imbalance-aware classification on a DeBERTa backbone.