A Survey on Device Behavior Fingerprinting: Data Sources, Techniques, Application Scenarios, and Datasets
Pedro Miguel S\'anchez S\'anchez, Jose Mar\'ia Jorquera Valero,, Alberto Huertas Celdr\'an, G\'er\^ome Bovet, Manuel Gil P\'erez, and Gregorio, Mart\'inez P\'erez

TL;DR
This survey reviews recent advances in device behavior fingerprinting, covering data sources, techniques, applications, and datasets, highlighting trends, challenges, and future directions in identifying device identities and detecting misbehavior.
Contribution
It provides a comprehensive overview and comparative analysis of recent research on device behavior fingerprinting, emphasizing application scenarios, data sources, processing techniques, and dataset characteristics.
Findings
Device identification and misbehavior detection are key scenarios.
Deep learning techniques are increasingly used for analysis.
Datasets vary in characteristics and availability.
Abstract
In the current network-based computing world, where the number of interconnected devices grows exponentially, their diversity, malfunctions, and cybersecurity threats are increasing at the same rate. To guarantee the correct functioning and performance of novel environments such as Smart Cities, Industry 4.0, or crowdsensing, it is crucial to identify the capabilities of their devices (e.g., sensors, actuators) and detect potential misbehavior that may arise due to cyberattacks, system faults, or misconfigurations. With this goal in mind, a promising research field emerged focusing on creating and managing fingerprints that model the behavior of both the device actions and its components. The article at hand studies the recent growth of the device behavior fingerprinting field in terms of application scenarios, behavioral sources, and processing and evaluation techniques. First, it…
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