Active vs. Passive: A Comparison of Automata Learning Paradigms for Network Protocols

Edi Muskardin, Andrea Pferscher, Bernhard K. Aichernig

Research output: Conference proceeding/Chapter in Book/Report/Conference Paperpeer-review

Abstract

Active automata learning became a popular tool for the behavioral analysis of communication protocols. The main advantage is that no manual modeling effort is required since a behavioral model is automatically inferred from a black-box system. However, several real-world applications of this technique show that the overhead for the establishment of an active interface might hamper the practical applicability. Our recent work on the active learning of Bluetooth Low Energy (BLE) protocol found that the active interaction creates a bottleneck during learning. Considering the automata learning toolset, passive learning techniques appear as a promising solution since they do not require an active interface to the system under learning. Instead, models are learned based on a given data set. In this paper, we evaluate passive learning for two network protocols: BLE and Message Queuing Telemetry Transport (MQTT). Our results show that passive techniques can correctly learn with less data than required by active learning. However, a general random data generation for passive learning is more expensive compared to the costs of active learning.
Original languageEnglish
Title of host publicationFormal Methods for Autonomous Systems
Publication statusPublished - Sept 2022

Keywords

  • Automata Learning
  • Network Protocols
  • Testing

Fingerprint

Dive into the research topics of 'Active vs. Passive: A Comparison of Automata Learning Paradigms for Network Protocols'. Together they form a unique fingerprint.

Cite this