Modelling revenue generation in a dynamically priced mobile telephony service
Authored by Han Wang, Damien Fay, Kenneth N Brown, Liam Kilmartin
Date Published: 2016
DOI: 10.1007/s11235-015-0106-6
Sponsors:
Irish Research Council
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Abstract
Dynamic pricing has been used extensively in specific markets for many
years but recent years have seen an interest in the utilization of this
approach for the deployment of novel and attractive tariff structures
for mobile communication services. This paper describes the development
and operation of an agent based model (ABM) for subscriber behavior in a
dynamically priced mobile telephony network. The design of the ABM was
based on an analysis of real call detail records recorded in a Uganda
mobile telephony network in which dynamic pricing was deployed. The ABM
includes components which simulate subscriber calling behavior, mobility
within the network and social linkages. Using this model, this paper
reports on an investigation of a number of alternative strategies for
the dynamic pricing algorithm which indicate that the network operator
will likely experience revenue losses ranging from a 5 \%, when the
pricing algorithm is based on offering high value subscriber cohort
enhanced random discounts compared to a lower value subscriber cohort, to 30 \%, when the priding algorithm results in the discount on offer in
a cell being inversely proportional to the contemporary cell load.
Additionally, the model appears to suggest that the use of optimization
algorithms to control the level of discount offered in cells would
likely result in discount simply converging to a ``no-discount{''}
scenario. Finally, commentary is offered on additional factors which
need to be considered when interpreting the results of this work such as
the impact of subscriber churn on the size of the subscriber base and
the technical and marketing challenges of deploying the various dynamic
pricing algorithms which have been investigated.
Tags
Simulation
behavior
networks
Land-use
systems