cs.AI updates on arXiv.org 07月18日 12:13
Benchmarking Deception Probes via Black-to-White Performance Boosts
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本文对比了白盒监控与黑盒监控在AI欺骗检测探针中的应用效果,发现现有欺骗探针在黑盒监控下仍能取得一定性能提升。

arXiv:2507.12691v1 Announce Type: new Abstract: AI assistants will occasionally respond deceptively to user queries. Recently, linear classifiers (called "deception probes") have been trained to distinguish the internal activations of a language model during deceptive versus honest responses. However, it's unclear how effective these probes are at detecting deception in practice, nor whether such probes are resistant to simple counter strategies from a deceptive assistant who wishes to evade detection. In this paper, we compare white-box monitoring (where the monitor has access to token-level probe activations) to black-box monitoring (without such access). We benchmark deception probes by the extent to which the white box monitor outperforms the black-box monitor, i.e. the black-to-white performance boost. We find weak but encouraging black-to-white performance boosts from existing deception probes.

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AI欺骗检测 白盒监控 黑盒监控 欺骗探针 性能评估
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