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  4. Keep Your Distance: Determining Sampling and Distance Thresholds in Machine Learning Monitoring
 
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2022
Conference Paper
Title

Keep Your Distance: Determining Sampling and Distance Thresholds in Machine Learning Monitoring

Abstract
Machine Learning (ML) has provided promising results in recent years across different applications and domains. However, in many cases, qualities such as reliability or even safety need to be ensured. To this end, one important aspect is to determine whether or not ML components are deployed in situations that are appropriate for their application scope. For components whose environments are open and variable, for instance those found in autonomous vehicles, it is therefore important to monitor their operational situation in order to determine its distance from the ML components’ trained scope. If that distance is deemed too great, the application may choose to consider the ML component outcome unreliable and switch to alternatives, e.g. using human operator input instead. SafeML is a model-agnostic approach for performing such monitoring, using distance measures based on statistical testing of the training and operational datasets. Limitations in setting SafeML up properly include the lack of a systematic approach for determining, for a given application, how many operational samples are needed to yield reliable distance information as well as to determine an appropriate distance threshold. In this work, we address these limitations by providing a practical approach and demonstrate its use in a well known traffic sign recognition problem, and on an example using the CARLA open-source automotive simulator.
Author(s)
Farhad, Al-Harith
Sorokos, Ioannis  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Schmidt, Andreas
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Akram, Mohammed Naveed  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Aslansefat, Koorosh
Schneider, Daniel  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Mainwork
Model-Based Safety and Assessment. 8th International Symposium, IMBSA 2022. Proceedings  
Conference
International Symposium on Model-Based Safety and Assessment 2022  
DOI
10.1007/978-3-031-15842-1_16
Language
English
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Keyword(s)
  • Machine Learning

  • Monitoring

  • Safety

  • Uncertainty

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