Publication | Closed Access
A fusion of data mining techniques for predicting movement of mobile users
19
Citations
22
References
2015
Year
EngineeringMachine LearningPattern DiscoveryWearable TechnologyPattern MiningMobile AnalyticsSequential Pattern MiningData ScienceData MiningPattern RecognitionInternet Of ThingsMobility DataHealth SciencesPredictive AnalyticsMobility ModelingKnowledge DiscoveryComputer ScienceMobile ComputingMobile Positioning DataMobile SensingHuman MovementActivity RecognitionMobile Users
Predicting locations of users with portable devices such as IP phones, smart-phones, iPads and iPods in public wireless local area networks (WLANs) plays a crucial role in location management and network resource allocation. Many techniques in machine learning and data mining, such as sequential pattern mining and clustering, have been widely used. However, these approaches have two deficiencies. First, because they are based on profiles of individual mobility behaviors, a sequential pattern technique may fail to predict new users or users with movement on novel paths. Second, using similar mobility behaviors in a cluster for predicting the movement of users may cause significant degradation in accuracy owing to indistinguishable regular movement and random movement. In this paper, we propose a novel fusion technique that utilizes mobility rules discovered from multiple similar users by combining clustering and sequential pattern mining. The proposed technique with two algorithms, named the clustering-based-sequential-pattern-mining (CSPM) and sequential-pattern-mining-based-clustering (SPMC), can deal with the lack of information in a personal profile and avoid some noise due to random movements by users. Experimental results show that our approach outperforms existing approaches in terms of efficiency and prediction accuracy.
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