Deep Probabilistic Accelerated Evaluation: A Robust Certifiable Rare-Event Simulation Methodology for Black-Box Safety-Critical Systems
Abstract
Evaluating the reliability of intelligent physical systems against rare safety-critical events poses a huge testing burden for real-world applications. Simulation provides a useful platform to evaluate the extremal risks of these systems before their deployments. Importance Sampling (IS), while proven to be powerful for rare-event simulation, faces challenges in handling these learning-based systems due to their black-box nature that fundamentally undermines its efficiency guarantee, which can lead to under-estimation without diagnostically detected. We propose a framework called Deep Probabilistic Accelerated Evaluation (Deep-PrAE) to design statistically guaranteed IS, by converting black-box samplers that are versatile but could lack guarantees, into one with what we call a relaxed efficiency certificate that allows accurate estimation of bounds on the safety-critical event probability. We present the theory of Deep-PrAE that combines the dominating point concept with rare-event set learning via deep neural network classifiers, and demonstrate its effectiveness in numerical examples including the safety-testing of an intelligent driving algorithm.
Cite
Text
Arief et al. " Deep Probabilistic Accelerated Evaluation: A Robust Certifiable Rare-Event Simulation Methodology for Black-Box Safety-Critical Systems ." Artificial Intelligence and Statistics, 2021.Markdown
[Arief et al. " Deep Probabilistic Accelerated Evaluation: A Robust Certifiable Rare-Event Simulation Methodology for Black-Box Safety-Critical Systems ." Artificial Intelligence and Statistics, 2021.](https://mlanthology.org/aistats/2021/arief2021aistats-deep/)BibTeX
@inproceedings{arief2021aistats-deep,
title = {{ Deep Probabilistic Accelerated Evaluation: A Robust Certifiable Rare-Event Simulation Methodology for Black-Box Safety-Critical Systems }},
author = {Arief, Mansur and Huang, Zhiyuan and Koushik Senthil Kumar, Guru and Bai, Yuanlu and He, Shengyi and Ding, Wenhao and Lam, Henry and Zhao, Ding},
booktitle = {Artificial Intelligence and Statistics},
year = {2021},
pages = {595-603},
volume = {130},
url = {https://mlanthology.org/aistats/2021/arief2021aistats-deep/}
}