cs.AI updates on arXiv.org 09月29日
VeriFlow架构:神经网络的流式密度模型
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本文提出VeriFlow架构,旨在通过限制验证搜索范围到感兴趣的数据分布,提高神经网络形式验证的效率和准确性。

arXiv:2406.14265v2 Announce Type: replace-cross Abstract: Formal verification has emerged as a promising method to ensure the safety and reliability of neural networks. However, many relevant properties, such as fairness or global robustness, pertain to the entire input space. If one applies verification techniques naively, the neural network is checked even on inputs that do not occur in the real world and have no meaning. To tackle this shortcoming, we propose the VeriFlow architecture as a flow-based density model tailored to allow any verification approach to restrict its search to some data distribution of interest. We argue that our architecture is particularly well suited for this purpose because of two major properties. First, we show that the transformation that is defined by our model is piecewise affine. Therefore, the model allows the usage of verifiers based on constraint solving with linear arithmetic. Second, upper density level sets (UDL) of the data distribution are definable via linear constraints in the latent space. As a consequence, representations of UDLs specified by a given probability are effectively computable in the latent space. This property allows for effective verification with a fine-grained, probabilistically interpretable control of how a-typical the inputs subject to verification are.

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神经网络 形式验证 VeriFlow架构 数据分布 线性约束
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