Quantifying Model Drift in Machine Learning for Estimating Wireless Link Quality
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Beitragende
Abstract
Deploying Machine Learning (ML) models in wireless networks comes with challenges beyond standard performance evaluation, particularly in their ability to remain reliable under changing network conditions. This study highlights some of these challenges by analyzing how models perform when tested on new radio links after training was completed, revealing significant performance degradation. A testbed was developed to study these effects, capturing real-world variations in wireless environments. Using this setup, the study based on link quality estimation (LQE), that is a critical aspect of network performance, demonstrates how data distribution shifts affect model performance. The findings from this first step emphasize the need for continuous monitoring and adaptation strategies, as well as further research on effectively implementing these methods in wireless networks.
Details
| Originalsprache | Englisch |
|---|---|
| Titel | 2025 IEEE International Mediterranean Conference on Communications and Networking, MeditCom 2025 |
| Herausgeber (Verlag) | Institute of Electrical and Electronics Engineers (IEEE) |
| Seitenumfang | 6 |
| ISBN (elektronisch) | 979-8-3315-2965-9 |
| Publikationsstatus | Veröffentlicht - 2025 |
| Peer-Review-Status | Ja |
Konferenz
| Titel | 2025 IEEE International Mediterranean Conference on Communications and Networking |
|---|---|
| Kurztitel | MeditCom 2025 |
| Dauer | 7 - 10 Juli 2025 |
| Webseite | |
| Ort | Splendid Hotel & Spa |
| Stadt | Nice |
| Land | Frankreich |
Externe IDs
| ORCID | /0000-0001-8469-9573/work/192579932 |
|---|---|
| ORCID | /0000-0001-7008-1537/work/192581866 |
Schlagworte
ASJC Scopus Sachgebiete
Schlagwörter
- Deep Neural Network, Link Quality Estimation, Model Drift, Testbed