Javascript must be enabled to continue!
A Review of Deep Learning Techniques for Encrypted Traffic Classification
View through CrossRef
Network traffic classification is significant for task such as Quality of Services (QoS) provisioning, resource usage planning, pricing as well as in the context of security such as in Intrusion detection systems. The field has received considerable attention in the industry as well as research communities where approaches such as Port based, Deep packet Inspection (DPI), and Classical machine learning techniques were thoroughly studied. However, the emergence of new applications and encryption protocols as a result of continuous transformation of Internet has led to the rise of new challenges. Recently, researchers have employed deep learning techniques in the domain of network traffic classification in order to leverage the inherent advantages offered by deep learning models such as the ability to capture complex pattern as well as automatic feature learning. This paper reviews deep learning based encrypted traffic classification techniques, as well as highlights the current research gap in the literature. Index Terms : Traffic classification, Encrypted traffic, Deep learning, Machine learning.
Technoarete Research and Development Association
Title: A Review of Deep Learning Techniques for Encrypted Traffic Classification
Description:
Network traffic classification is significant for task such as Quality of Services (QoS) provisioning, resource usage planning, pricing as well as in the context of security such as in Intrusion detection systems.
The field has received considerable attention in the industry as well as research communities where approaches such as Port based, Deep packet Inspection (DPI), and Classical machine learning techniques were thoroughly studied.
However, the emergence of new applications and encryption protocols as a result of continuous transformation of Internet has led to the rise of new challenges.
Recently, researchers have employed deep learning techniques in the domain of network traffic classification in order to leverage the inherent advantages offered by deep learning models such as the ability to capture complex pattern as well as automatic feature learning.
This paper reviews deep learning based encrypted traffic classification techniques, as well as highlights the current research gap in the literature.
Index Terms : Traffic classification, Encrypted traffic, Deep learning, Machine learning.
Related Results
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
TYPES OF AI ALGORİTHMS USED İN TRAFFİC FLOW PREDİCTİON
The increasing complexity of urban transportation systems and the growing volume of vehicles have made traffic congestion a persistent challenge in modern cities. Efficient traffic...
Trustworthy Deep Learning for Encrypted Traffic Classification
Trustworthy Deep Learning for Encrypted Traffic Classification
Abstract
Network traffic classification refers to the identification of collected network traffic data of various applications, which is widely used in research fields such...
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Enhancing Non-Formal Learning Certificate Classification with Text Augmentation: A Comparison of Character, Token, and Semantic Approaches
Enhancing Non-Formal Learning Certificate Classification with Text Augmentation: A Comparison of Character, Token, and Semantic Approaches
Aim/Purpose: The purpose of this paper is to address the gap in the recognition of prior learning (RPL) by automating the classification of non-formal learning certificates using d...
Traffic Prediction in 5G Networks Using Machine Learning
Traffic Prediction in 5G Networks Using Machine Learning
The advent of 5G technology promises a paradigm shift in the realm of
telecommunications, offering unprecedented speeds and connectivity. However, the
...
Explainable Anomaly Detection in Encrypted Network Traffic Using Data Analytics
Explainable Anomaly Detection in Encrypted Network Traffic Using Data Analytics
The unsanctioned growth of the encrypted network traffic is a two-sided problem for the cybersecurity, on one hand, it preserves the privacy of the users, and, on the other hand, i...
A Deep Reinforcement Learning-Based Method for Signal Duration Control at Intersections with Asymmetric Traffic Flows
A Deep Reinforcement Learning-Based Method for Signal Duration Control at Intersections with Asymmetric Traffic Flows
At the intersection with asymmetric traffic flow, a single neural network or other control methods cannot make a choice in time to ensure that the intersection with a large traffic...

