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Functional modelling of telecommunications data

    Algimantas Birbilas   Affiliation
    ; Alfredas Račkauskas   Affiliation

Abstract

This work deals with statistical modeling and forecasting of telecommunications data. Main mobile traffic events (SMS, Voice calls, Mobile data) are smoothed using B-spline functions and later analyzed in a functional framework. Functional linear auto-regression models are fitted using both bottom-up and topdown design methodologies. The advantages and disadvantages of both approaches for the prediction of mobile telephone users’ habits are discussed.

Keyword : functional data analysis, functional linear regression, telecommunications data, prediction

How to Cite
Birbilas, A., & Račkauskas, A. (2022). Functional modelling of telecommunications data. Mathematical Modelling and Analysis, 27(1), 117–133. https://doi.org/10.3846/mma.2022.14043
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Feb 7, 2022
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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