Machine Learning for QoS Prediction in Vehicular Communication: Challenges and Solution Approaches
Alexandros Palaios, Christian L. Vielhaus, Daniel F. K\"ulzer, Cara, Watermann, Rodrigo Hernangomez, Sanket Partani, Philipp Geuer, Anton Krause,, Raja Sattiraju, Martin Kasparick, Gerhard Fettweis, Frank H. P. Fitzek, Hans, D. Schotten, and Slawomir Stanczak

TL;DR
This paper explores machine learning techniques for predicting quality of service in vehicular networks, emphasizing challenges, data analysis, feature engineering, and validation of models in real-world scenarios.
Contribution
It provides a comprehensive analysis of the entire ML workflow for QoS prediction, highlighting data handling, feature importance, and the use of explainable AI in vehicular communication.
Findings
Network information significantly improves prediction accuracy.
Random data splits can overestimate model performance.
Explainable AI reveals underlying network principles.
Abstract
As cellular networks evolve towards the 6th generation, machine learning is seen as a key enabling technology to improve the capabilities of the network. Machine learning provides a methodology for predictive systems, which can make networks become proactive. This proactive behavior of the network can be leveraged to sustain, for example, a specific quality of service requirement. With predictive quality of service, a wide variety of new use cases, both safety- and entertainment-related, are emerging, especially in the automotive sector. Therefore, in this work, we consider maximum throughput prediction enhancing, for example, streaming or high-definition mapping applications. We discuss the entire machine learning workflow highlighting less regarded aspects such as the detailed sampling procedures, the in-depth analysis of the dataset characteristics, the effects of splits in the…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Human Mobility and Location-Based Analysis · Age of Information Optimization
Methodstravel james
