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A Systematic Approach for Evaluating Artificial Intelligence Models in Industrial Settings.

Authors :
Benedick PL
Robert J
Le Traon Y
Source :
Sensors (Basel, Switzerland) [Sensors (Basel)] 2021 Sep 15; Vol. 21 (18). Date of Electronic Publication: 2021 Sep 15.
Publication Year :
2021

Abstract

Artificial Intelligence (AI) is one of the hottest topics in our society, especially when it comes to solving data-analysis problems. Industry are conducting their digital shifts, and AI is becoming a cornerstone technology for making decisions out of the huge amount of (sensors-based) data available in the production floor. However, such technology may be disappointing when deployed in real conditions. Despite good theoretical performances and high accuracy when trained and tested in isolation, a Machine-Learning (M-L) model may provide degraded performances in real conditions. One reason may be fragility in treating properly unexpected or perturbed data. The objective of the paper is therefore to study the robustness of seven M-L and Deep-Learning (D-L) algorithms, when classifying univariate time-series under perturbations. A systematic approach is proposed for artificially injecting perturbations in the data and for evaluating the robustness of the models. This approach focuses on two perturbations that are likely to happen during data collection. Our experimental study, conducted on twenty sensors' datasets from the public University of California Riverside (UCR) repository, shows a great disparity of the models' robustness under data quality degradation. Those results are used to analyse whether the impact of such robustness can be predictable-thanks to decision trees-which would prevent us from testing all perturbations scenarios. Our study shows that building such a predictor is not straightforward and suggests that such a systematic approach needs to be used for evaluating AI models' robustness.

Details

Language :
English
ISSN :
1424-8220
Volume :
21
Issue :
18
Database :
MEDLINE
Journal :
Sensors (Basel, Switzerland)
Publication Type :
Academic Journal
Accession number :
34577398
Full Text :
https://doi.org/10.3390/s21186195