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  4. Data-driven probabilistic evaluation of logic properties with PAC-confidence on Mealy machines
 
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Data-driven probabilistic evaluation of logic properties with PAC-confidence on Mealy machines

Publikationstyp
Conference Paper
Date Issued
2025-03
Sprache
English
Author(s)
Plambeck, Swantje  orcid-logo
Eingebettete Systeme E-13  
Salamati, Ali  
Hüllermeier, Eyke  
Fey, Görschwin  orcid-logo
Eingebettete Systeme E-13  
TORE-URI
https://hdl.handle.net/11420/57217
First published in
ITG-Fachbericht  
Number in series
320
Start Page
142
End Page
149
Citation
28th Workshop "Methods and Description Languages for Modeling and Verification of Circuits and Systems", MBMV 2025
Contribution to Conference
28th Workshop "Methods and Description Languages for Modeling and Verification of Circuits and Systems", MBMV 2025  
Scopus ID
2-s2.0-105014116896
Publisher
VDE Verlag
ISBN of container
978-3-8007-6516-4
Cyber-Physical Systems (CPS) are complex systems that require powerful models for tasks like verification, diagnosis, or debugging. Often, suitable models are not available and manual extraction is difficult. Data-driven approaches then provide a solution to, e.g., diagnosis tasks and verification problems based on data collected from the system. In this paper, we consider CPS with a discrete abstraction in the form of a Mealy machine. We propose a data-driven approach to determine the safety probability of the system on a finite horizon of n time steps. The approach is based on the Probably Approximately Correct (PAC) learning paradigm. Thus, we elaborate a connection between discrete logic and probabilistic reachability analysis of systems, especially providing an additional confidence on the determined probability. The learning process follows an active learning paradigm, where new learning data is sampled in a guided way after an initial learning set is collected. We validate the approach with a case study on an automated lane-keeping system.
DDC Class
600: Technology
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