Ablation experiments show that removing the high-frequency branch from FreeUp degrades AUC from 86.68% to 77.09% on CIC-IoT2023 (−9.6 pp) and from 95.53% to 95.10% on ISCX-Tor2016. Removing the entire frequency-decoupled framework causes the largest degradation, dropping to 82.10% AUC on CIC-IoT2023 and 81.26% on DoHBrw2020, confirming that high-frequency components are the primary discriminative signal in encrypted traffic anomaly detection.
From 2026-lian-decompose-understand-fuse — Decompose to Understand, Fuse to Detect: Frequency-Decoupled Anomaly Detection for Encrypted Network Traffic
· §V-C, Table II
· 2026
· arXiv preprint
Implications
High-frequency spectral content in encrypted traffic is a primary detection feature; circumvention protocols that introduce low-frequency structure (consistent packet sizes, predictable inter-arrival patterns mimicking HTTP/2 or QUIC) are harder to classify as anomalous.
The 9.6 pp AUC gap from suppressing high-frequency analysis suggests traffic shaping toward low-frequency dominance could meaningfully degrade this class of classifier.