FINDING · DETECTION

TrafficMoE achieves 97.65% accuracy and F1-score on the ISCX-Tor2016 dataset, substantially outperforming all baselines including the best pretraining-based competitor FlowletFormer (91.16% F1), by separately modeling protocol headers and encrypted payloads via dual-branch sparse Mixture-of-Experts rather than treating them as a unified byte stream.

From 2026-he-trafficmoe-heterogeneity-aware-mixtureTrafficMoE: Heterogeneity-aware Mixture of Experts for Encrypted Traffic Classification · §IV-B, Table II · 2026 · arXiv preprint

Implications

Tags

censors
generic
techniques
ml-classifiertraffic-shape
defenses
torpluggable-transport

Extracted by claude-sonnet-4-6 — review before relying.