Files
ja4-platform/docs/thesis
Jacquin Antoine 7894d39f1c feat(ml): replace logistic regression with MLP fusion and KS drift with ADWIN online learning
Replace the LogisticRegression meta-learner with a PyTorch MetaFusionMLP
(Linear(3,16)->BN->ReLU->Dropout->Linear(16,1)->Sigmoid) for non-linear
fusion of EIF, NF, and XGBoost scores. Replace KS-test + quantile digest
drift detection with ADWIN (adaptive sliding window, Hoeffding bound).
Replace weekly XGBoost batch retraining with River HoeffdingAdaptiveTree
for incremental online learning (learn_one per cycle). Update all thesis
documentation sections (2.4.2c, 2.4.3, 3.8, discussion, conclusion).

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-04-13 16:32:34 +02:00
..

Détection et Classification du Trafic HTTP Malveillant

Document technique — Avril 2026 — Version 4.0

Ce document est divisé en 9 parties :

Fichier Contenu Lignes
00_resume.md Titre, résumé, table des matières 75
01_introduction.md Section 1 — Introduction, contexte, générations de défenses 50
02_etat_de_lart.md Section 2 — État de l'art (règles statiques, fingerprinting, ML) 208
03_architecture.md Section 3.13.8 — Architecture multi-couches, pipeline ML 767
04_browser_matcher.md Section 3.9 — Browser Signature Detection (browser_matcher) 481
05_features.md Section 4 — Taxonomie des 96 features (8 familles) 682
06_techniques_avancees.md Section 5 — Techniques comportementales avancées (§5.15.8) 669
07_discussion_limites.md Section 6 — Discussion, limites, scalabilité, RGPD 207
08_conclusion_references.md Sections 78 — Conclusion et références 277