A Survey on Explainable Artificial Intelligence for Internet Traffic Classification and Prediction, and Intrusion Detection
With the increasing complexity and scale of modern networks, the demand for transparent
and interpretable Artificial Intelligence (AI) models has surged. This survey comprehensively …
and interpretable Artificial Intelligence (AI) models has surged. This survey comprehensively …
[HTML][HTML] Challenges and Advances in Analyzing TLS 1.3-Encrypted Traffic: A Comprehensive Survey
J Zhou, W Fu, W Hu, Z Sun, T He, Z Zhang - Electronics, 2024 - mdpi.com
The widespread adoption of encrypted communication protocols has significantly enhanced
network security and user privacy, simultaneously elevating the importance of encrypted …
network security and user privacy, simultaneously elevating the importance of encrypted …
Improving performance, reliability, and feasibility in multimodal multitask traffic classification with XAI
The promise of Deep Learning (DL) in solving hard problems such as network Traffic
Classification (TC) is being held back by the severe lack of transparency and explainability …
Classification (TC) is being held back by the severe lack of transparency and explainability …
[Retracted] CLD‐Net: A Network Combining CNN and LSTM for Internet Encrypted Traffic Classification
X Hu, C Gu, F Wei - Security and Communication Networks, 2021 - Wiley Online Library
The development of the Internet has led to the complexity of network encrypted traffic.
Identifying the specific classes of network encryption traffic is an important part of …
Identifying the specific classes of network encryption traffic is an important part of …
Deep learning for encrypted traffic classification in the face of data drift: An empirical study
Deep learning models have shown to achieve high performance in encrypted traffic
classification. However, when it comes to production use, multiple factors challenge the …
classification. However, when it comes to production use, multiple factors challenge the …
Netdiffusion: Network data augmentation through protocol-constrained traffic generation
Datasets of labeled network traces are essential for a multitude of machine learning (ML)
tasks in networking, yet their availability is hindered by privacy and maintenance concerns …
tasks in networking, yet their availability is hindered by privacy and maintenance concerns …
[HTML][HTML] Fine-grained TLS services classification with reject option
J Luxemburk, T Čejka - Computer Networks, 2023 - Elsevier
The recent success and proliferation of machine learning and deep learning have provided
powerful tools, which are also utilized for encrypted traffic analysis, classification, and threat …
powerful tools, which are also utilized for encrypted traffic analysis, classification, and threat …
Contextual counters and multimodal Deep Learning for activity-level traffic classification of mobile communication apps during COVID-19 pandemic
The COVID-19 pandemic has reshaped Internet traffic due to the huge modifications
imposed to lifestyle of people resorting more and more to collaboration and communication …
imposed to lifestyle of people resorting more and more to collaboration and communication …
Extensible machine learning for encrypted network traffic application labeling via uncertainty quantification
S Jorgensen, J Holodnak, J Dempsey… - IEEE Transactions …, 2023 - ieeexplore.ieee.org
With the increasing prevalence of encrypted network traffic, cybersecurity analysts have
been turning to machine learning (ML) techniques to elucidate the traffic on their networks …
been turning to machine learning (ML) techniques to elucidate the traffic on their networks …
[PDF][PDF] On precisely detecting censorship circumvention in real-world networks
The understanding of realistic censorship threats enables the development of more resilient
censorship circumvention systems, which are vitally important for advancing human rights …
censorship circumvention systems, which are vitally important for advancing human rights …