Lightweight models achieve competitive botnet detection on CTU-13 with Random Forest at ROC-AUC 0.97 and PR-AUC 0.54 while training 90% faster than CNN baselines.
Graph-based botnet detection using GNNs
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Botnet Detection on CTU-13 Using Lightweight Machine Learning Models
Lightweight models achieve competitive botnet detection on CTU-13 with Random Forest at ROC-AUC 0.97 and PR-AUC 0.54 while training 90% faster than CNN baselines.