Abstract
The increase in the usage of different mobile internet applications can cause deterioration in the mobile network performance. Such deterioration often declines the performance of the mobile network services that can influence the mobile Internet user’s experience, which can make the internet users switch between different mobile network operators to get good user experience. In this case, the success of mobile network operators primarily depends on the ability to ensure good quality of experience (QoE), which is a measure of users’ perceived quality of mobile Internet service. Traditionally, QoE is usually examined in laboratory experiments to enable a fixed contextual factor among the participants even though the results derived from these laboratory experiments presented an estimated mean opinion score representing perceived QoE. The use of user experience dataset involving time and location gathered from the mobile network traffic for modelling perceived QoE is still limited in the literature. The mobile Internet user experience dataset involving the time and location constituted in the mobile network can be used by the mobile network operators to make data-driven decisions to deal with disruptions observed in the network performance and provide an optimal solution based on the insights derived from the user experience data. Therefore, this paper proposed a framework for modelling mobile network QoE using the big data analytics approach. The proposed framework describes the process of estimating or predicting perceived QoE based on the datasets obtained or gathered from the mobile network to enable the mobile network operators effectively to manage the network performance and provide the users a satisfactory mobile Internet QoE.
Highlights
In recent years, immense usage of Internet-based services has been drawn around the evolution of high-speed mobile network located on the Universal Mobile Telecommunication Systems (UMTS), Long Term Evolution (LTE) and other telecommunications (Telecoms) standards
This study argued based on the approach of using large datasets obtained from the mobile network for the modelling of Internet service-related applications perceived quality of experience (QoE)
This study supported the view that the mobile network is made up of large diverse key quality indicators (KQI) and key performance indicators (KPI) datasets consisting of many files from a vast number of cells (Yang, Liu, Sun, Yang, & Chen, 2016)
Summary
Immense usage of Internet-based services has been drawn around the evolution of high-speed mobile network located on the Universal Mobile Telecommunication Systems (UMTS), Long Term Evolution (LTE) and other telecommunications (Telecoms) standards. Gathering measurement data from the desktop application in laboratory experiments limits the use of physical (location, time movement and mobility), temporal components (the past and future situations involving the time of the day, month, and year) and economic components constituted in the context influence factors (Barakovic & SkorinKapov, 2013; Tsiaras et al, 2014).
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