FINDING · EVALUATION
The authors trained on 1 GB of captured Shadowsocks traffic and 1 GB of non-Shadowsocks traffic from a single host, then tested on over 1 GB of each from 26 randomly selected hosts. The cross-host generalization of the model is demonstrated but no explicit false-positive or false-negative rates are reported.
From 2017-deng-random — The Random Forest based Detection of Shadowsock's Traffic · §V.B–C · 2017 · Intelligent Human-Machine Systems and Cybernetics
Implications
- The absence of reported FPR/FNR numbers is a significant methodological gap — circumvention designers should treat the 85% figure as an optimistic lab bound that may not hold at ISP-scale with diverse benign traffic.
- Evaluating evasion against classifiers trained on only 1–2 GB of capture is tractable; real-world deployment would require adversarially probing larger, more diverse training sets.
Tags
Extracted by claude-sonnet-4-6 — review before relying.