Into the unknown: active monitoring of neural networks (extended version)


연구 분야: Software Development



학회: International Journal on Software Tools for Technology Transfer


초록

Neural-network classifiers achieve high accuracy when predicting the class of an input that they were trained to identify. Maintaining this accuracy in dynamic environments, where inputs frequently fall outside the fixed set of initially known classes, remains a challenge. We consider the problem of monitoring the classification decisions of neural networks in the presence of novel classes. For this purpose, we generalize our recently proposed abstraction-based monitor from binary output to real-valued quantitative output. This quantitative output enables new applications, two of which we investigate in the paper. As our first application, we introduce an algorithmic framework for active monitoring of a neural network, which allows us to learn new classes dynamically and yet maintain high monitoring performance. As our second application, we present an offline procedure to retrain the neural network to improve the monitor’s detection performance without deteriorating the network’s classification accuracy. Our experimental evaluation demonstrates both the benefits of our active monitoring framework in dynamic scenarios and the effectiveness of the retraining procedure.


Author Profile
Konstantin Kueffner

IST Austria Am Campus 1 Klosterneuburg 3400 Austria

Armenia
Author Profile
Anna Lukina

TU Delft Van Mourik Broekmanweg 6 Delft 2628 XE The Netherlands

Netherlands
Author Profile
Christian Schilling

Aalborg University Selma Lagerlöfs Vej 300 Aalborg 9220 Denmark

Denmark

📄 논문 정보

발행 연도 2023년
인용수 2
출판 국가 Armenia, Netherlands, Denmark
사이트 Springer
좋아요 수 0

연관 논문 목록 (25건)