Abstract
The convergence of Internet of Things (IoTs), mobile computing, cloud computing, edge computing and big data has brought a paradigm shift in computing technologies. New computing systems, application models, and application areas are emerging to handle the massive growth of streaming data in mobile environments such as smartphones, IoTs, body sensor networks, and wearable devices, to name a few. However, the challenge arises about how and where to process the data streams in order to perform analytic operations and uncover useful knowledge patterns. The mobile data stream mining (MDSM) applications involve a number of operations for, 1) data acquisition from heterogeneous data sources, 2) data preprocessing, 3) data fusion, 4) data mining, and 5) knowledge management. This article presents a thorough review of execution platforms for MDSM applications. In addition, a detailed taxonomic discussion of heterogeneous MDSM applications is presented. Moreover, the article presents detailed literature review of methods that are used to handle heterogeneity at application and platform levels. Finally, the gap analysis is articulated and future research directions are presented to develop next-generation MDSM applications.
| Original language | English |
|---|---|
| Pages (from-to) | 1-24 |
| Journal | Journal of Network and Computer Applications |
| Volume | 79 |
| DOIs | |
| Publication status | Published - 1 Dec 2016 |
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