1 research outputs found
Hot or not? Forecasting cellular network hot spots using sector performance indicators
To manage and maintain large-scale cellular networks, operators need to know
which sectors underperform at any given time. For this purpose, they use the
so-called hot spot score, which is the result of a combination of multiple
network measurements and reflects the instantaneous overall performance of
individual sectors. While operators have a good understanding of the current
performance of a network and its overall trend, forecasting the performance of
each sector over time is a challenging task, as it is affected by both regular
and non-regular events, triggered by human behavior and hardware failures. In
this paper, we study the spatio-temporal patterns of the hot spot score and
uncover its regularities. Based on our observations, we then explore the
possibility to use recent measurements' history to predict future hot spots. To
this end, we consider tree-based machine learning models, and study their
performance as a function of time, amount of past data, and prediction horizon.
Our results indicate that, compared to the best baseline, tree-based models can
deliver up to 14% better forecasts for regular hot spots and 153% better
forecasts for non-regular hot spots. The latter brings strong evidence that,
for moderate horizons, forecasts can be made even for sectors exhibiting
isolated, non-regular behavior. Overall, our work provides insight into the
dynamics of cellular sectors and their predictability. It also paves the way
for more proactive network operations with greater forecasting horizons.Comment: Accepted for publication at ICDE 2017 - Industrial Trac