When Will You Have a New Mobile Phone? An Empirical Answer From Big Data

When and why people change their mobile phones are important issues in mobile communications industry, because it will impact greatly on the marketing strategy and revenue estimation for both mobile operators and manufactures. It is a promising way to take use of big data to analyze and predict the...

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Main Authors: Qingli Ma, Sihai Zhang, Wuyang Zhou, Shui Yu, Chonggang Wang
Format: Article
Language:English
Published: IEEE 2016-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7784768/
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spelling doaj-efad59cf41344c8c9892a79406da36d32021-03-29T19:49:15ZengIEEEIEEE Access2169-35362016-01-014101471015710.1109/ACCESS.2016.26358057784768When Will You Have a New Mobile Phone? An Empirical Answer From Big DataQingli Ma0https://orcid.org/0000-0002-5424-7549Sihai Zhang1https://orcid.org/0000-0001-5758-2169Wuyang Zhou2Shui Yu3Chonggang Wang4Key Laboratory of Wireless-Optical Communications, Chinese Academy of Sciences University of Science and Technology of China, Hefei, ChinaKey Laboratory of Wireless-Optical Communications, Chinese Academy of Sciences University of Science and Technology of China, Hefei, ChinaKey Laboratory of Wireless-Optical Communications, Chinese Academy of Sciences University of Science and Technology of China, Hefei, ChinaSchool of Information Technology, Deakin University, Melbourne, AustraliaInterDigital Communication, Pennsylvania, USAWhen and why people change their mobile phones are important issues in mobile communications industry, because it will impact greatly on the marketing strategy and revenue estimation for both mobile operators and manufactures. It is a promising way to take use of big data to analyze and predict the phone changing event. In this paper, based on mobile user big data, first through statistical analysis, we find that three important probability distributions, i.e., power-law, log-normal, and geometric distribution, play an important role in the user behaviors. Second, the relationships between eight selected attributes and phone changing are built, for example, young people have greater intention to change their phones if they are using the phones belonging to the low occupancy phones or feature phones. Third, we verified the performance of four prediction models on phone changing event under three scenarios. Information gain ratio was used to implement attribute selection and then sampling method, cost-sensitive together with standard classifiers were used to solve imbalanced phone changing event. Experiment results show our proposed enhanced backpropagation neural network in the undersampling scenario can attain better prediction performance.https://ieeexplore.ieee.org/document/7784768/Mobile big dataattribute selectionimbalance problemphone changing predictionmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Qingli Ma
Sihai Zhang
Wuyang Zhou
Shui Yu
Chonggang Wang
spellingShingle Qingli Ma
Sihai Zhang
Wuyang Zhou
Shui Yu
Chonggang Wang
When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
IEEE Access
Mobile big data
attribute selection
imbalance problem
phone changing prediction
machine learning
author_facet Qingli Ma
Sihai Zhang
Wuyang Zhou
Shui Yu
Chonggang Wang
author_sort Qingli Ma
title When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
title_short When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
title_full When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
title_fullStr When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
title_full_unstemmed When Will You Have a New Mobile Phone? An Empirical Answer From Big Data
title_sort when will you have a new mobile phone? an empirical answer from big data
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2016-01-01
description When and why people change their mobile phones are important issues in mobile communications industry, because it will impact greatly on the marketing strategy and revenue estimation for both mobile operators and manufactures. It is a promising way to take use of big data to analyze and predict the phone changing event. In this paper, based on mobile user big data, first through statistical analysis, we find that three important probability distributions, i.e., power-law, log-normal, and geometric distribution, play an important role in the user behaviors. Second, the relationships between eight selected attributes and phone changing are built, for example, young people have greater intention to change their phones if they are using the phones belonging to the low occupancy phones or feature phones. Third, we verified the performance of four prediction models on phone changing event under three scenarios. Information gain ratio was used to implement attribute selection and then sampling method, cost-sensitive together with standard classifiers were used to solve imbalanced phone changing event. Experiment results show our proposed enhanced backpropagation neural network in the undersampling scenario can attain better prediction performance.
topic Mobile big data
attribute selection
imbalance problem
phone changing prediction
machine learning
url https://ieeexplore.ieee.org/document/7784768/
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