Self-Checking Deep Neural Networks in DeploymentTechnical Track
Tue 25 May 2021 23:10 - 23:30 at Blended Sessions Room 3 - 1.1.3. Deep Neural Networks: Validation #1
The widespread adoption of Deep Neural Networks (DNNs) in important domains raises questions about the trustworthiness of DNN outputs. Even a highly accurate DNN will make mistakes some of the time, and in settings like self-driving vehicles these mistakes must be quickly detected and properly dealt with \emph{in deployment}.
Just as our community has developed effective techniques and mechanisms to monitor and check programmed components, we believe it is now necessary to do the same for DNNs. In this paper we present DNN self-checking as a process by which internal DNN layer features are used to check DNN predictions. We detail \emph{SelfChecker}, a self-checking system that monitors DNN outputs and triggers an alarm if the internal layer features of the model are inconsistent with the final prediction. SelfChecker also provides \emph{advice} in the form of an alternative prediction.
We evaluated SelfChecker on four popular image datasets and three DNN models and found that SelfChecker triggers correct alarms on 60.56% of wrong DNN predictions, and false alarms on 2.04% of correct DNN predictions. This is a substantial improvement over prior work (SelfOracle, Dissector, and ConfidNet). In experiments with self-driving car scenarios, SelfChecker triggers more correct alarms than SelfOracle for two DNN models (DAVE-2 and Chauffeur) with comparable false alarms. Our implementation is available as open source.
Tue 25 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
10:30 - 11:30 | 1.1.3. Deep Neural Networks: Validation #1Technical Track at Blended Sessions Room 3 +12h Chair(s): Oscar Dieste Universidad Politécnica de Madrid | ||
10:30 20mPaper | Operation is the hardest teacher: estimating DNN accuracy looking for mispredictionsTechnical Track Technical Track Antonio Guerriero Università di Napoli Federico II, Roberto Pietrantuono Università di Napoli Federico II, Stefano Russo Università di Napoli Federico II Pre-print Media Attached | ||
10:50 20mPaper | AUTOTRAINER: An Automatic DNN Training Problem Detection and Repair SystemTechnical Track Technical Track Xiaoyu Zhang Xi'an Jiaotong University, Juan Zhai Rutgers University, Shiqing Ma Rutgers University, Chao Shen Xi'an Jiaotong University Pre-print Media Attached | ||
11:10 20mPaper | Self-Checking Deep Neural Networks in DeploymentTechnical Track Technical Track Yan Xiao National University of Singapore, Ivan Beschastnikh University of British Columbia, David Rosenblum George Mason University, Changsheng Sun National University of Singapore, Sebastian Elbaum University of Virginia, Yun Lin National University of Singapore, Jin Song Dong National University of Singapore Pre-print Media Attached |
22:30 - 23:30 | |||
22:30 20mPaper | Operation is the hardest teacher: estimating DNN accuracy looking for mispredictionsTechnical Track Technical Track Antonio Guerriero Università di Napoli Federico II, Roberto Pietrantuono Università di Napoli Federico II, Stefano Russo Università di Napoli Federico II Pre-print Media Attached | ||
22:50 20mPaper | AUTOTRAINER: An Automatic DNN Training Problem Detection and Repair SystemTechnical Track Technical Track Xiaoyu Zhang Xi'an Jiaotong University, Juan Zhai Rutgers University, Shiqing Ma Rutgers University, Chao Shen Xi'an Jiaotong University Pre-print Media Attached | ||
23:10 20mPaper | Self-Checking Deep Neural Networks in DeploymentTechnical Track Technical Track Yan Xiao National University of Singapore, Ivan Beschastnikh University of British Columbia, David Rosenblum George Mason University, Changsheng Sun National University of Singapore, Sebastian Elbaum University of Virginia, Yun Lin National University of Singapore, Jin Song Dong National University of Singapore Pre-print Media Attached |