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  4. Active automata learning in practice: An annotated bibliography of the years 2011 to 2016
 
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2018
Book Article
Title

Active automata learning in practice: An annotated bibliography of the years 2011 to 2016

Abstract
Active automata learning is slowly becoming a standard tool in the toolbox of the software engineer. As systems become ever more complex and development becomes more distributed, inferred models of system behavior become an increasingly valuable asset for understanding and analyzing a system's behavior. Five years ago (in 2011) we have surveyed the then current state of active automata learning research and applications of active automata learning in practice. We predicted four major topics to be addressed in the then near future: efficiency, expressivity of models, bridging the semantic gap between formal languages and analyzed components, and solutions to the inherent problem of incompleteness of active learning in black-box scenarios. In this paper we review the progress that has been made over the past five years, assess the status of active automata learning techniques with respect to applications in the field of software engineering, and present an updated agenda for future research.
Author(s)
Howar, Falk  
Steffen, Bernhard
Mainwork
Machine learning for dynamic software analysis: Potentials and limits  
Conference
Dagstuhl Seminar "Machine Learning for Dynamic Software Analysis" 2016  
DOI
10.1007/978-3-319-96562-8_5
Language
English
Fraunhofer-Institut für Software- und Systemtechnik ISST  
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