MFWDD: Model-based Feature Weight Drift Detection Showcased on TLS and QUIC Traffic
Autoři
Rok
2024
Publikováno
2024 20th International Conference on Network and Service Management (CNSM). New York: IEEE, 2024. ISSN 2165-963X. ISBN 978-3-903176-66-9.
Typ
Stať ve sborníku
Pracoviště
Anotace
Machine learning (ML) represents an efficient and popular approach for network traffic classification. However, network traffic inspection is a challenging domain and trained models may degrade soon after deployment. Besides biases present during data captures and model creation, data drifts contribute significantly to ML model degradation. This paper proposes a novel method called Model-based Feature Weight Drift Detection (MFWDD) for concept drift detection. It is a part of a public software framework suited for dataset drift analysis tailored to the domain of network traffic. This work addresses TLS and QUIC service classification problems, examines a variety of experiments analyzing the evolution of the respective distributions, and observes their degradation over time on different ML features. The MFWDD framework guided TLS and QUIC services classification models retraining throughout an extensive period and not only prevented model degradation but also improved its performance and consistency over time.