Towards a Certified Proof Checker for Deep Neural Network Verification

Remi Desmartin, Omri Isac, G. Passmore, Kathrin Stark, Guy Katz, Ekaterina Komendantskaya
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Abstract

Recent developments in deep neural networks (DNNs) have led to their adoption in safety-critical systems, which in turn has heightened the need for guaranteeing their safety. These safety properties of DNNs can be proven using tools developed by the verification community. However, these tools are themselves prone to implementation bugs and numerical stability problems, which make their reliability questionable. To overcome this, some verifiers produce proofs of their results which can be checked by a trusted checker. In this work, we present a novel implementation of a proof checker for DNN verification. It improves on existing implementations by offering numerical stability and greater verifiability. To achieve this, we leverage two key capabilities of Imandra, an industrial theorem prover: its support of infinite precision real arithmetic and its formal verification infrastructure. So far, we have implemented a proof checker in Imandra, specified its correctness properties and started to verify the checker's compliance with them. Our ongoing work focuses on completing the formal verification of the checker and further optimizing its performance.
面向深度神经网络验证的认证证明检查器
深度神经网络(dnn)的最新发展导致其在安全关键系统中的应用,这反过来又提高了保证其安全性的需求。dnn的这些安全特性可以使用验证社区开发的工具来证明。然而,这些工具本身容易出现实现错误和数值稳定性问题,这使得它们的可靠性受到质疑。为了克服这个问题,一些验证者会为他们的结果提供证明,这些证明可以由可信的检查者进行检查。在这项工作中,我们提出了一种用于DNN验证的证明检查器的新实现。它通过提供数值稳定性和更高的可验证性来改进现有的实现。为了实现这一点,我们利用了Imandra(一个工业定理证明器)的两个关键功能:它对无限精度实数算法的支持及其形式化验证基础设施。到目前为止,我们已经在Imandra中实现了一个证明检查器,指定了它的正确性属性,并开始验证检查器是否符合这些属性。我们正在进行的工作重点是完成检查器的正式验证并进一步优化其性能。
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