Output Reachable Set Estimation and Verification for Multilayer Neural Networks 论文

2018IEEE Transactions on Neural Networks and Learning Systems引用 270
Adversarial Robustness in Machine LearningFault Detection and Control SystemsMachine Learning and Algorithms

摘要

In this brief, the output reachable estimation and safety verification problems for multilayer perceptron (MLP) neural networks are addressed. First, a conception called maximum sensitivity is introduced, and for a class of MLPs whose activation functions are monotonic functions, the maximum sensitivity can be computed via solving convex optimization problems. Then, using a simulation-based method, the output reachable set estimation problem for neural networks is formulated into a chain of optimization problems. Finally, an automated safety verification is developed based on the output reachable set estimation result. An application to the safety verification for a robotic arm model with two joints is presented to show the effectiveness of the proposed approaches.