Improving active Mealy machine learning for protocol conformance testing

作者:Fides Aarts, Harco Kuppens, Jan Tretmans, Frits Vaandrager, Sicco Verwer

摘要

Using a well-known industrial case study from the verification literature, the bounded retransmission protocol, we show how active learning can be used to establish the correctness of protocol implementation I relative to a given reference implementation R. Using active learning, we learn a model M R of reference implementation R, which serves as input for a model-based testing tool that checks conformance of implementation I to M R . In addition, we also explore an alternative approach in which we learn a model M I of implementation I, which is compared to model M R using an equivalence checker. Our work uses a unique combination of software tools for model construction (Uppaal), active learning (LearnLib, Tomte), model-based testing (JTorX, TorXakis) and verification (CADP, MRMC). We show how these tools can be used for learning models of and revealing errors in implementations, present the new notion of a conformance oracle, and demonstrate how conformance oracles can be used to speed up conformance checking.

论文关键词:Active learning, Automaton learning, Mealy machines, State machine synthesis, Model-based testing, Protocol learning, Model checking

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论文官网地址:https://doi.org/10.1007/s10994-013-5405-0