In this paper we challenge the applicability of entropy-based approaches for detecting and diagnosis network traffic anomalies, and claim that full statistics (i.e., empirical probability distributions) should be applied to improve the change-detection capabilities. We support our claim by detecting and diagnosing large-scale traffic anomalies in a real cellular network, caused by specific OTT (Over The Top) services and smartphone devices. Our results clearly suggest that anomaly detection and diagnosis based on entropy analysis is prone to errors and misses typical characteristics of traffic anomalies, particularly in the studied scenario.
CITATION STYLE
Fiadino, P., D’Alconzo, A., Schiavone, M., & Casas, P. (2015). Challenging Entropy-based Anomaly Detection and Diagnosis in Cellular Networks. Computer Communication Review, 45(4), 87–88. https://doi.org/10.1145/2785956.2790011
Mendeley helps you to discover research relevant for your work.