Scalable Quantitative Verification For Deep Neural NetworksTechnical Track
Thu 27 May 2021 00:00 - 00:20 at Blended Sessions Room 2 - 2.1.2. Deep Neural Networks: Quality Assurance
Despite the functional success of deep neural networks, their trustworthiness remains a crucial open challenge. To address this challenge, both testing and verification techniques have been proposed. But these existing techniques provide either scalability to large networks or formal guarantees, not both. In this paper, we propose a scalable quantitative verification framework for deep neural networks, i.e., a test-driven approach that comes with formal guarantees that a desired probabilistic property is satisfied. Our technique performs enough tests until soundness of a formal probabilistic property can be proven. It can be used to certify properties of both deterministic and randomized DNNs. We implement our approach in a tool called PROVERO and apply it in the context of certifying adversarial robustness of DNNs. In this context, we first show a new attack- agnostic measure of robustness which offers an alternative to purely attack-based methodology of evaluating robustness being reported today. Second, PROVERO provides certificates of robustness for large DNNs, where existing state-of-the-art verification tools fail to produce conclusive results. Our work paves the way forward for verifying properties of distributions captured by real-world deep neural network, with provable guarantees, even where testers only have black-box access to the neural network.
Wed 26 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
11:20 - 12:20 | 2.1.2. Deep Neural Networks: Quality AssuranceTechnical Track at Blended Sessions Room 2 +12h Chair(s): Gregorio Robles Universidad Rey Juan Carlos | ||
11:20 20mPaper | Graph-based Fuzz Testing for Deep Learning Inference EnginesTechnical Track Technical Track Weisi Luo I&V Dept of Kirin Solution Dept, HS, Huawei, Xiaoyue Run I&V Dept of Kirin Solution Dept, HS, Huawei, Dong Chai I&V Dept of Kirin Solution Dept, HS, Huawei, Jiang Wang I&V Dept of Kirin Solution Dept, HS, Huawei, Chunrong Fang Nanjing University, Zhenyu Chen Nanjing University Pre-print Media Attached File Attached | ||
11:40 20mPaper | RobOT: Robustness-Oriented Testing for Deep Learning SystemsTechnical Track Technical Track Jingyi Wang Zhejiang University, Jialuo Chen Zhejiang University, Youcheng Sun Queen's University Belfast, UK, Xingjun Ma Deakin University, Dongxia Wang Zhejiang University, Jun Sun Singapore Management University, Singapore, Peng Cheng Zhejiang University Pre-print Media Attached | ||
12:00 20mPaper | Scalable Quantitative Verification For Deep Neural NetworksTechnical Track Technical Track Teodora Baluta National University of Singapore, Zheng Leong Chua Independent Researcher, Kuldeep S. Meel National University of Singapore, Prateek Saxena National University of Singapore Pre-print Media Attached |
23:20 - 00:20 | |||
23:20 20mPaper | Graph-based Fuzz Testing for Deep Learning Inference EnginesTechnical Track Technical Track Weisi Luo I&V Dept of Kirin Solution Dept, HS, Huawei, Xiaoyue Run I&V Dept of Kirin Solution Dept, HS, Huawei, Dong Chai I&V Dept of Kirin Solution Dept, HS, Huawei, Jiang Wang I&V Dept of Kirin Solution Dept, HS, Huawei, Chunrong Fang Nanjing University, Zhenyu Chen Nanjing University Pre-print Media Attached File Attached | ||
23:40 20mPaper | RobOT: Robustness-Oriented Testing for Deep Learning SystemsTechnical Track Technical Track Jingyi Wang Zhejiang University, Jialuo Chen Zhejiang University, Youcheng Sun Queen's University Belfast, UK, Xingjun Ma Deakin University, Dongxia Wang Zhejiang University, Jun Sun Singapore Management University, Singapore, Peng Cheng Zhejiang University Pre-print Media Attached | ||
00:00 20mPaper | Scalable Quantitative Verification For Deep Neural NetworksTechnical Track Technical Track Teodora Baluta National University of Singapore, Zheng Leong Chua Independent Researcher, Kuldeep S. Meel National University of Singapore, Prateek Saxena National University of Singapore Pre-print Media Attached |