EvoDefense introduces a co-evolving black-box defense using LLMs with an experience memory module and iterative attack-defense optimization that reduces attack success rates across multiple models and attacks while preserving general capabilities.
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EvoDefense: Co-Evolving Black-Box Defense with Large Language Models
EvoDefense introduces a co-evolving black-box defense using LLMs with an experience memory module and iterative attack-defense optimization that reduces attack success rates across multiple models and attacks while preserving general capabilities.