cs.AI updates on arXiv.org 10月08日
AI模型隐私风险与监管挑战
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本文探讨了AI模型在实例搜索中的隐私风险,指出模型可能通过过度学习识别个人,并提出通过技术手段降低识别准确性的方法。同时,提出AI治理与数据保护的监管问题。

arXiv:2510.06026v1 Announce Type: cross Abstract: Generic instance search models can dramatically reduce the manual effort required to analyze vast surveillance footage during criminal investigations by retrieving specific objects of interest to law enforcement. However, our research reveals an unintended emergent capability: through overlearning, these models can single out specific individuals even when trained on datasets without human subjects. This capability raises concerns regarding identification and profiling of individuals based on their personal data, while there is currently no clear standard on how de-identification can be achieved. We evaluate two technical safeguards to curtail a model's person re-identification capacity: index exclusion and confusion loss. Our experiments demonstrate that combining these approaches can reduce person re-identification accuracy to below 2% while maintaining 82% of retrieval performance for non-person objects. However, we identify critical vulnerabilities in these mitigations, including potential circumvention using partial person images. These findings highlight urgent regulatory questions at the intersection of AI governance and data protection: How should we classify and regulate systems with emergent identification capabilities? And what technical standards should be required to prevent identification capabilities from developing in seemingly benign applications?

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AI模型 隐私风险 监管挑战 数据保护 技术标准
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