Using Quantifier Elimination to Enhance the Safety Assurance of Deep Neural Networks

Hao Ren, Sai Krishnan Chandrasekar, A. Murugesan
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引用次数: 3

Abstract

Advances in the field of Machine Learning and Deep Neural Networks (DNNs) has enabled rapid development of sophisticated and autonomous systems. However, the inherent complexity to rigorously assure the safe operation of such systems hinders their real-world adoption in safety-critical domains such as aerospace and medical devices. Hence, there is a surge in interest to explore the use of advanced mathematical techniques such as formal methods to address this challenge. In fact, the initial results of such efforts are promising. Along these lines, we propose the use of quantifier elimination (QE) - a formal method technique, as a complimentary technique to the state-of-the-art static analysis and verification procedures. Using an airborne collision avoidance DNN as a case example, we illustrate the use of QE to formulate the precise range forward propagation through a network as well as analyze its robustness. We discuss the initial results of this ongoing work and explore the future possibilities of extending this approach and/or integrating it with other approaches to perform advanced safety assurance of DNNs.
利用量词消去增强深度神经网络的安全保障
机器学习和深度神经网络(dnn)领域的进步使复杂和自主系统的快速发展成为可能。然而,严格确保此类系统安全运行的固有复杂性阻碍了它们在航空航天和医疗设备等安全关键领域的实际应用。因此,探索使用高级数学技术(如形式化方法)来解决这一挑战的兴趣激增。事实上,这些努力的初步结果是有希望的。沿着这些思路,我们建议使用量词消除(QE) -一种正式方法技术,作为最先进的静态分析和验证程序的补充技术。以机载避碰深度神经网络为例,说明了QE在网络中精确距离前向传播的应用,并分析了其鲁棒性。我们讨论了这项正在进行的工作的初步结果,并探讨了扩展该方法和/或将其与其他方法集成以执行dnn高级安全保证的未来可能性。
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