Abstract

Forecasting with high accuracy the volume of data traffic that mobile users will consume is becoming increasingly important for precision traffic engineering, demand-aware network resource allocation, as well as public transportation. Measurements collection in dense urban deployments is however complex and expensive, and the post-processing required to make predictions is highly non-trivial, given the intricate spatio-temporal variability of mobile traffic due to user mobility. To overcome these challenges, in this paper we harness the exceptional feature extraction abilities of deep learning and propose a Spatio-Temporal neural Network (STN) architecture purposely designed for precise network-wide mobile traffic forecasting. We present a mechanism that fine tunes the STN and enables its operation with only limited ground truth observations. We then introduce a Double STN technique (D-STN), which uniquely combines the STN predictions with historical statistics, thereby making faithful long-term mobile traffic projections. Experiments we conduct with real-world mobile traffic data sets, collected over 60 days in both urban and rural areas, demonstrate that the proposed (D-)STN schemes perform up to 10-hour long predictions with remarkable accuracy, irrespective of the time of day when they are triggered. Specifically, our solutions achieve up to 61% smaller prediction errors as compared to widely used forecasting approaches, while operating with up to 600 times shorter measurement intervals.


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The different versions of the original document can be found in:

http://dx.doi.org/10.1145/3209582.3209606 under the license http://www.acm.org/publications/policies/copyright_policy#Background
https://arxiv.org/abs/1712.08083,
https://dl.acm.org/citation.cfm?id=3209606,
https://doi.acm.org/10.1145/3209582.3209606,
https://www.research.ed.ac.uk/portal/files/56312541/traffic_forecasting.pdf,
https://doi.org/10.1145/3209582.3209606,
https://www.research.ed.ac.uk/portal/en/publications/longterm-mobile-traffic-forecasting-using-deep-spatiotemporal-neural-networks(824abcdc-5fb8-4d61-9f71-e77681eb6ae0).html,
http://www.arxiv-vanity.com/papers/1712.08083,
https://academic.microsoft.com/#/detail/2963035276
https://doi.org/10.1145/3209582.3209606,
http://hdl.handle.net/20.500.11820/824abcdc-5fb8-4d61-9f71-e77681eb6ae0,
https://www.pure.ed.ac.uk/ws/files/56312541/traffic_forecasting.pdf,
https://www.sigmobile.org/mobihoc/2018,
https://dl.acm.org/citation.cfm?id=3209606
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Document information

Published on 01/01/2018

Volume 2018, 2018
DOI: 10.1145/3209582.3209606
Licence: Other

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