Regional Correlation Aided Mobile Traffic Prediction with Spatiotemporal
Deep Learning
- URL: http://arxiv.org/abs/2312.06279v1
- Date: Mon, 11 Dec 2023 10:33:19 GMT
- Title: Regional Correlation Aided Mobile Traffic Prediction with Spatiotemporal
Deep Learning
- Authors: JeongJun Park, Lusungu J. Mwasinga, Huigyu Yang, Syed M. Raza, Duc-Tai
Le, Moonseong Kim, Min Young Chung and Hyunseung Choo
- Abstract summary: This paper proposes an enhanced mobile traffic prediction scheme that combines the strategy of daily mobile peak traffic time and novel multitemporal Convolutional Network with a Long Short Term Memory model.
Our experiments on large-scale real-world mobile traffic data show up to 28% performance improvement compared to state-of-the-art studies, which confirms the efficacy and viability of the proposed approach.
- Score: 4.4959908420821675
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mobile traffic data in urban regions shows differentiated patterns during
different hours of the day. The exploitation of these patterns enables highly
accurate mobile traffic prediction for proactive network management. However,
recent Deep Learning (DL) driven studies have only exploited spatiotemporal
features and have ignored the geographical correlations, causing high
complexity and erroneous mobile traffic predictions. This paper addresses these
limitations by proposing an enhanced mobile traffic prediction scheme that
combines the clustering strategy of daily mobile traffic peak time and novel
multi Temporal Convolutional Network with a Long Short Term Memory (multi
TCN-LSTM) model. The mobile network cells that exhibit peak traffic during the
same hour of the day are clustered together. Our experiments on large-scale
real-world mobile traffic data show up to 28% performance improvement compared
to state-of-the-art studies, which confirms the efficacy and viability of the
proposed approach.
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