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While the research involves the analysis and generation of potentially harmful content, all such content is strictly used for experimental and defense evaluation purposes, in full compliance with academic ethical standards, and is prohibited from any form of dissemination or misuse. We hope that this work will offer theoretical foundations and methodological insights for future research in security assessment, adversarial testing, and defense development, thereby contributing to the advancement of generative models along a compliant and secure trajectory.","order":2,"name":"Ethics","group":{"name":"EthicsHeading","label":"Ethical statement and broader impact"}}],"article-number":"144"}}