CBR – Boosting Adaptive Classification By Retrieval of Encrypted Network Traffic with Out-of-distribution
CoRR(2024)
摘要
Encrypted network traffic Classification tackles the problem from different
approaches and with different goals. One of the common approaches is using
Machine learning or Deep Learning-based solutions on a fixed number of classes,
leading to misclassification when an unknown class is given as input. One of
the solutions for handling unknown classes is to retrain the model, however,
retraining models every time they become obsolete is both resource and
time-consuming. Therefore, there is a growing need to allow classification
models to detect and adapt to new classes dynamically, without retraining, but
instead able to detect new classes using few shots learning [1]. In this paper,
we introduce Adaptive Classification By Retrieval CBR, a novel approach for
encrypted network traffic classification. Our new approach is based on an
ANN-based method, which allows us to effectively identify new and existing
classes without retraining the model. The novel approach is simple, yet
effective and achieved similar results to RF with up to 5
less than that) in the classification tasks while having a slight decrease in
the case of new samples (from new classes) without retraining. To summarize,
the new method is a real-time classification, which can classify new classes
without retraining. Furthermore, our solution can be used as a complementary
solution alongside RF or any other machine/deep learning classification method,
as an aggregated solution.
更多查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要