dc.contributor.author | Moghadas Gholian, Serly | |
dc.contributor.author | Fiandrino, Claudio | |
dc.contributor.author | Widmer, Joerg | |
dc.date.accessioned | 2025-02-28T13:23:15Z | |
dc.date.available | 2025-02-28T13:23:15Z | |
dc.date.issued | 2025-05 | |
dc.identifier.uri | https://hdl.handle.net/20.500.12761/1908 | |
dc.description.abstract | The exponential growth of mobile data traffic
demands efficient and scalable forecasting methods to optimize
network performance. Traditional approaches, like training
individual models for each Base Station ( BS) are computationally
prohibitive for large-scale production deployments. In this paper,
we propose a scalable Deep Neural Networks (DNN) training
framework for mobile network traffic forecasting that reduces
input redundancy and computational overhead. We minimize
the number of input probes (traffic monitors at Base Stations
(BSs)) by grouping BS s with temporal similarity using K-means
clustering with Dynamic Time Warping (DTW ) as the distance
metric. Within each cluster, we train a DNN model, selecting
a subset of BSs as inputs to predict future traffic demand for
all BSs in that cluster. To further optimize input selection, we
leverage the well-known EXplainable Artificial Intelligence ( XAI)
technique, LayeR-wise backPropagation ( LRP) to identify the
most influential BS s within each cluster. This makes it possible
to reduce the number of required probes while maintaining high
prediction accuracy. To validate our newly proposed framework,
we conduct experiments on two real-world mobile traffic datasets.
Specifically, our approach achieves competitive accuracy while
reducing the total number of input probes by approximately 81%
compared to state-of-the-art predictors. | es |
dc.language.iso | eng | es |
dc.title | A Scalable DNN Training Framework for Traffic Forecasting in Mobile Networks | es |
dc.type | conference object | es |
dc.conference.date | 26–29 May 2025 | es |
dc.conference.place | Barcelona, Spain | es |
dc.conference.title | IEEE International Conference on Machine Learning for Communication and Networking | * |
dc.event.type | conference | es |
dc.pres.type | paper | es |
dc.type.hasVersion | AM | es |
dc.rights.accessRights | open access | es |
dc.page.final | 7 | es |
dc.page.initial | 1 | es |
dc.relation.projectID | Ministerio de Ciencia, Innovación y Universidades | es |
dc.relation.projectID | Ministerio de Asusntos Económicos y Transformación Digital | es |
dc.relation.projectName | bRAIN (Explainable and robust AI for integration in next generation networked systems) | es |
dc.relation.projectName | MAP-6G (Machine Learning-based Privacy Preserving Analytics for 6G Mobile Networks) | es |
dc.relation.projectName | RISC-6G (Reconfigurable Intelligent Surfaces and Low-power Technologies for Communication and Sensing in 6G Mobile Networks) | es |
dc.relation.projectName | Ramón y Cajal | es |
dc.subject.keyword | Spatio-temporal traffic forecasting | es |
dc.subject.keyword | cellular networks | es |
dc.subject.keyword | deep learning | es |
dc.subject.keyword | clustering | es |
dc.subject.keyword | explainable AI | es |
dc.description.refereed | TRUE | es |
dc.description.status | inpress | es |