ReachNN

Author:

Huang Chao1,Fan Jiameng2,Li Wenchao2,Chen Xin3,Zhu Qi1

Affiliation:

1. Northwestern University, Evanston, Illinois

2. Boston University, Boston, Massachusetts

3. University of Dayton, Dayton, Ohio

Abstract

Applying neural networks as controllers in dynamical systems has shown great promises. However, it is critical yet challenging to verify the safety of such control systems with neural-network controllers in the loop. Previous methods for verifying neural network controlled systems are limited to a few specific activation functions. In this work, we propose a new reachability analysis approach based on Bernstein polynomials that can verify neural-network controlled systems with a more general form of activation functions, i.e., as long as they ensure that the neural networks are Lipschitz continuous. Specifically, we consider abstracting feedforward neural networks with Bernstein polynomials for a small subset of inputs. To quantify the error introduced by abstraction, we provide both theoretical error bound estimation based on the theory of Bernstein polynomials and more practical sampling based error bound estimation, following a tight Lipschitz constant estimation approach based on forward reachability analysis. Compared with previous methods, our approach addresses a much broader set of neural networks, including heterogeneous neural networks that contain multiple types of activation functions. Experiment results on a variety of benchmarks show the effectiveness of our approach.

Funder

National Science Foundation

NSF grant

DARPA BRASS program

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Software

Reference40 articles.

1. The algorithmic analysis of hybrid systems

2. Jimmy Ba and Rich Caruana. 2014. Do deep nets really need to be deep?. In Advances in Neural Information Processing Systems. 2654--2662. Jimmy Ba and Rich Caruana. 2014. Do deep nets really need to be deep?. In Advances in Neural Information Processing Systems. 2654--2662.

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