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Main Authors: Zion, Yehonatan, Aharon, Porat, Dubin, Ran, Dvir, Amit, Hajaj, Chen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.16539
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author Zion, Yehonatan
Aharon, Porat
Dubin, Ran
Dvir, Amit
Hajaj, Chen
author_facet Zion, Yehonatan
Aharon, Porat
Dubin, Ran
Dvir, Amit
Hajaj, Chen
contents The increasing popularity of online services has made Internet Traffic Classification a critical field of study. However, the rapid development of internet protocols and encryption limits usable data availability. This paper addresses the challenges of classifying encrypted internet traffic, focusing on the scarcity of open-source datasets and limitations of existing ones. We propose two Data Augmentation (DA) techniques to synthetically generate data based on real samples: Average augmentation and MTU augmentation. Both augmentations are aimed to improve the performance of the classifier, each from a different perspective: The Average augmentation aims to increase dataset size by generating new synthetic samples, while the MTU augmentation enhances classifier robustness to varying Maximum Transmission Units (MTUs). Our experiments, conducted on two well-known academic datasets and a commercial dataset, demonstrate the effectiveness of these approaches in improving model performance and mitigating constraints associated with limited and homogeneous datasets. Our findings underscore the potential of data augmentation in addressing the challenges of modern internet traffic classification. Specifically, we show that our augmentation techniques significantly enhance encrypted traffic classification models. This improvement can positively impact user Quality of Experience (QoE) by more accurately classifying traffic as video streaming (e.g., YouTube) or chat (e.g., Google Chat). Additionally, it can enhance Quality of Service (QoS) for file downloading activities (e.g., Google Docs).
format Preprint
id arxiv_https___arxiv_org_abs_2407_16539
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Encrypted Internet Traffic Classification Through Advanced Data Augmentation Techniques
Zion, Yehonatan
Aharon, Porat
Dubin, Ran
Dvir, Amit
Hajaj, Chen
Machine Learning
The increasing popularity of online services has made Internet Traffic Classification a critical field of study. However, the rapid development of internet protocols and encryption limits usable data availability. This paper addresses the challenges of classifying encrypted internet traffic, focusing on the scarcity of open-source datasets and limitations of existing ones. We propose two Data Augmentation (DA) techniques to synthetically generate data based on real samples: Average augmentation and MTU augmentation. Both augmentations are aimed to improve the performance of the classifier, each from a different perspective: The Average augmentation aims to increase dataset size by generating new synthetic samples, while the MTU augmentation enhances classifier robustness to varying Maximum Transmission Units (MTUs). Our experiments, conducted on two well-known academic datasets and a commercial dataset, demonstrate the effectiveness of these approaches in improving model performance and mitigating constraints associated with limited and homogeneous datasets. Our findings underscore the potential of data augmentation in addressing the challenges of modern internet traffic classification. Specifically, we show that our augmentation techniques significantly enhance encrypted traffic classification models. This improvement can positively impact user Quality of Experience (QoE) by more accurately classifying traffic as video streaming (e.g., YouTube) or chat (e.g., Google Chat). Additionally, it can enhance Quality of Service (QoS) for file downloading activities (e.g., Google Docs).
title Enhancing Encrypted Internet Traffic Classification Through Advanced Data Augmentation Techniques
topic Machine Learning
url https://arxiv.org/abs/2407.16539