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Conference Paper Congestion or No Congestion: Packet Loss Identification and Prediction Using Machine Learning
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Authors
Inayat Ali, Seungwoo Hong, Taesik Cheung
Issue Date
2024-08
Citation
International Conference on Platform Technology and Service (PlatCon) 2024, pp.72-76
Publisher
IEEE
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/PLATCON63925.2024.10830750
Abstract
Packet losses in the network significantly impact network performance. Most TCP variants reduce the transmission rate when detecting packet losses, assuming network congestion, resulting in lower throughput and affecting bandwidth-intensive applications like immersive applications. However, not all packet losses are due to congestion; some occur due to wireless link issues, which we refer to as non-congestive packet losses. In today’s hybrid Internet, packets of a single flow may traverse wired and wireless segments of a network to reach their destination. TCP should not react to non-congestive packet losses the same way as it does to congestive losses. However, TCP currently can not differentiate between these types of packet losses and lowers its transmission rate irrespective of packet loss type, resulting in lower throughput for wireless clients. To address this challenge, we use machine learning techniques to distinguish between these types of packet losses at end hosts, utilizing easily available features at the host. Our results demonstrate that Random Forest and K-Nearest Neighbor classifiers perform better in predicting the type of packet loss, offering a promising solution to enhance network performance.
KSP Keywords
End hosts, Immersive Applications, K-Nearest Neighbor(KNN), Machine Learning technique(MLT), Network performance, TCP variants, Transmission Rate, Wired and wireless, k-Nearest Neighbor classifiers, network congestion, packet loss