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State Matching and Multiple References in Adaptive Active Automata Learning

About

Active automata learning (AAL) is a method to infer state machines by interacting with black-box systems. Adaptive AAL aims to reduce the sample complexity of AAL by incorporating domain specific knowledge in the form of (similar) reference models. Such reference models appear naturally when learning multiple versions or variants of a software system. In this paper, we present state matching, which allows flexible use of the structure of these reference models by the learner. State matching is the main ingredient of adaptive L#, a novel framework for adaptive learning, built on top of L#. Our empirical evaluation shows that adaptive L# improves the state of the art by up to two orders of magnitude.

Loes Kruger, Sebastian Junges, Jurriaan Rot• 2024

Related benchmarks

TaskDatasetResultRank
Protocol Model LearningBLE
Fingerprint Symbols0.00e+0
3
Protocol Model LearningBLEDiff
Fingerprint Symbols0.00e+0
3
Protocol Model LearningMQTT
Fingerprint Symbols0.00e+0
3
Protocol Model LearningSSH
Fingerprint Symbols Count0.00e+0
3
Protocol Model LearningTLS
Fingerprint Symbols0.00e+0
3
State Machine LearningBLE Experiment 1c
Fingerprinting Symbols0.00e+0
3
State Machine LearningBLEDiff Experiment 1c
Fingerprinting Symbols Count0.00e+0
3
State Machine LearningMQTT Experiment 1c
Fingerprinting Symbols Count0.00e+0
3
State Machine LearningSSH Experiment 1c
Fingerprinting Symbols Count0.00e+0
3
State Machine LearningTLS Experiment 1c
Fingerprinting Symbols Count0.00e+0
3
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