2024
DOI: 10.1007/s10462-024-11024-6
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Generative AI model privacy: a survey

Yihao Liu,
Jinhe Huang,
Yanjie Li
et al.

Abstract: The rapid progress of generative AI models has yielded substantial breakthroughs in AI, facilitating the generation of realistic synthetic data across various modalities. However, these advancements also introduce significant privacy risks, as the models may inadvertently expose sensitive information from their training data. Currently, there is no comprehensive survey work investigating privacy issues, e.g., attacking and defending privacy in generative AI models. We strive to identify existing attack techniq… Show more

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