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  4. StaDRe and StaDRo: Reliability and Robustness Estimation of ML-Based Forecasting Using Statistical Distance Measures
 
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2022
Conference Paper
Title

StaDRe and StaDRo: Reliability and Robustness Estimation of ML-Based Forecasting Using Statistical Distance Measures

Abstract
Reliability estimation of Machine Learning (ML) models is becoming a crucial subject. This is particularly the case when such models are deployed in safety-critical applications, as the decisions based on model predictions can result in hazardous situations. In this regard, recent research has proposed methods to achieve safe, dependable, and reliable ML systems. One such method consists of detecting and analyzing distributional shift, and then measuring how such systems respond to these shifts. This was proposed in earlier work in SafeML. This work focuses on the use of SafeML for time series data, and on reliability and robustness estimation of ML-forecasting methods using statistical distance measures. To this end, distance measures based on the Empirical Cumulative Distribution Function (ECDF) proposed in SafeML are explored to measure Statistical-Distance Dissimilarity (SDD) across time series. We then propose SDD-based Reliability Estimate (StaDRe) and SDD-based Robustness (StaDRo) measures. With the help of a clustering technique, the similarity between the statistical properties of data seen during training and the forecasts is identified. The proposed method is capable of providing a link between dataset SDD and Key Performance Indicators (KPIs) of the ML models.
Author(s)
Akram, Mohammed Naveed  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Ambekar, Akshatha
Sorokos, Ioannis  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Aslansefat, Koorosh
Schneider, Daniel  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Mainwork
Computer Safety, Reliability, and Security. SAFECOMP 2022 Workshops, DECSoS, DepDevOps, SASSUR, SENSEI, USDAI, and WAISE. Proceedings  
Project(s)
Building Trust in Ecosystems and Ecosystem Components  
Funding(s)
H2020  
Funder
European Commission
Conference
International Conference on Computer Safety, Reliability and Security 2022  
International Workshop on Artificial Intelligence Safety Engineering 2022  
DOI
10.1007/978-3-031-14862-0_21
Language
English
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Keyword(s)
  • Artificial intelligence safety

  • Machine learning reliability

  • Safe machine learning

  • SafeAI

  • Statistical method

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