posted on 2023-11-29, 18:19authored byDana Fisman, Hadar Frenkel, Sandra Zilles
We study the learnability of symbolic finite state automata, a model shown useful in many applications in software verification. The state-of-the-art literature on this topic follows the query learning paradigm, and so far all obtained results are positive. We provide a necessary condition for efficient learnability of SFAs in this paradigm, from which we obtain the first negative result. The main focus of our work lies in the learnability of SFAs under the paradigm of identification in the limit using polynomial time and data. We provide a necessary condition and a sufficient condition for efficient learnability of SFAs in this paradigm, from which we derive a positive and a negative result.
History
Preferred Citation
Dana Fisman, Hadar Frenkel and Sandra Zilles. Inferring Symbolic Automata. In: Annual Conference on Computer Science Logic (CSL). 2022.
Primary Research Area
Reliable Security Guarantees
Name of Conference
Annual Conference on Computer Science Logic (CSL)
Legacy Posted Date
2022-05-06
Open Access Type
Gold
BibTeX
@inproceedings{cispa_all_3562,
title = "Inferring Symbolic Automata",
author = "Fisman, Dana and Frenkel, Hadar and Zilles, Sandra",
booktitle="{Annual Conference on Computer Science Logic (CSL)}",
year="2022",
}