cs.AI updates on arXiv.org 10月02日
AI开发者隐私风险认知差异
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文章调查了25位欧洲AI开发者对隐私风险的认知,发现他们对隐私风险排名存在分歧,且实际应用中缓解策略采用率低。

arXiv:2510.00909v1 Announce Type: cross Abstract: The proliferation of AI has sparked privacy concerns related to training data, model interfaces, downstream applications, and more. We interviewed 25 AI developers based in Europe to understand which privacy threats they believe pose the greatest risk to users, developers, and businesses and what protective strategies, if any, would help to mitigate them. We find that there is little consensus among AI developers on the relative ranking of privacy risks. These differences stem from salient reasoning patterns that often relate to human rather than purely technical factors. Furthermore, while AI developers are aware of proposed mitigation strategies for addressing these risks, they reported minimal real-world adoption. Our findings highlight both gaps and opportunities for empowering AI developers to better address privacy risks in AI.

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AI开发者 隐私风险 认知差异 缓解策略 欧洲
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