CESNET-QUIC22: A large one-month QUIC network traffic dataset from backbone lines

Author:

Luxemburk JanORCID,Hynek KarelORCID,Čejka TomášORCID,Lukačovič Andrej,Šiška Pavel

Publisher

Elsevier BV

Subject

Multidisciplinary

Reference13 articles.

1. J. Luxemburk, K. Hynek, T. Čejka, A. Lukačovič, P. Šiška, CESNET-QUIC22: a large one-month QUIC network traffic dataset from backbone lines, 2022. Dataset, 10.5281/zenodo.7409924.

2. A look behind the curtain: traffic classification in an increasingly encrypted web;Akbari;Proc. ACM Meas. Anal. Comput. Syst.,2021

3. Website fingerprinting on early QUIC traffic;Zhan;Comput. Netw.,2021

4. S. Rezaei, X. Liu, How to Achieve High Classification Accuracy with Just a Few Labels: A Semi-supervised Approach Using Sampled Packets, arXiv:1812.09761(2020).

5. A novel QUIC traffic classifier based on convolutional neural networks;Tong,2018

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