Author_Institution :
Grad. Sch. of Comput. & Inf. Sci., Hosei Univ., Koganei, Japan
Abstract :
Smart devices, i.e., smartphone, have come into our daily lives, which become obviously inseparable. Although a variety of functions (e.g., gaming, networking, etc.) are provided, making calls remain the major task. This phenomenon implies the possibility of understanding human behaviors, especially the action contexts (e.g., moving preference, regularity, sociability, etc.), can be expected. In addition, precise services become applicable to be provided through mining, analysis, and prediction of such information. In this study, we investigate the travelling pattern, focusing especially on routine (say excluding the events in holidays), of mobile users via real calling histories. A general model, Travelling Pattern Model, was developed, primarily dealing with the contexts of calling and correlated geographical information. This model not only enables high prevision prediction of users but also benefits business models through the detail understanding of user behaviors.
Keywords :
behavioural sciences computing; data mining; geographic information systems; business models; correlated geographical information; indistinct cellular data mining; mobile users routine; real calling histories; travelling pattern model; user behaviors; user travelling pattern prediction; Arrays; Databases; Educational institutions; Google; History; Mobile communication; Predictive models; human behavior; prediction model; sequence analysis; travelling pattern model;