期刊
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH
卷 281, 期 3, 页码 687-705出版社
ELSEVIER
DOI: 10.1016/j.ejor.2019.02.046
关键词
Analytics; Artificial intelligence; Data mining; Decision support systems; OR in telecommunications; Validation of OR Computations
资金
- Center for Open Intelligent Connectivity from The Featured Areas Research Center Program within the Ministry of Education (MOE) in Taiwan
- InfoTech Frankfurt am Main, Germany under USt [DE320245686]
- Ministry of Science and Technology (MOST) [106-2221-E-009-006, 106-2221-E-009-049-MY2]
- Aiming for the Top University Program of National Chiao Tung University
- Ministry of Education, Taiwan
- Academia Sinica [AS-105-TP-A07]
- Ministry of Economic Affairs (MOEA) [106-EC-17-A-24-0619]
Mobile internet usage has exploded with the mass popularity of smartphones that offer more convenient and efficient ways of doing anything from watching movies, playing games, and streaming music. Understanding the patterns of data usage is thus essential for strategy-focused data-driven business analytics. However, data usage has several unique stylized facts (such as high dimensionality, heteroscedasticity, and sparsity) due to a great variety of user behaviour. To manage these facts, we propose a novel density-based subspace clustering approach (i.e., a three-stage iterative optimization procedure) for intelligent segmentation of consumer data usage/demand. We discuss the characteristics of the proposed method and illustrate its performance in both simulation with synthetic data and business analytics with real data. In a field experiment of wireless mobile telecommunications for data-driven strategic design and managerial implementation, we show that our method is adequate for business analytics and plausible for sustainability in search of business value. (C) 2019 Published by Elsevier B.V.
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