On profiling mobility and predicting locations of campus-wide wireless network users (2005)
| Venue: | In REALMAN ’06: Proceedings of the Second International ACM/SIGMOBILE Workshop on Multi-hop Ad Hoc Networks (MobiHoc |
| Citations: | 11 - 2 self |
BibTeX
@TECHREPORT{Ghosh05onprofiling,
author = {Joy Ghosh and Matthew J. Beal and Hung Q. Ngo and Chunming Qiao},
title = {On profiling mobility and predicting locations of campus-wide wireless network users},
institution = {In REALMAN ’06: Proceedings of the Second International ACM/SIGMOBILE Workshop on Multi-hop Ad Hoc Networks (MobiHoc},
year = {2005}
}
Years of Citing Articles
OpenURL
Abstract
Abstract — In this paper, we analyze a year long wireless network users ’ mobility trace data collected on ETH Zurich campus. Unlike earlier work in [9], [21], [35], we profile the movement pattern of wireless users and predict their locations. More specifically, we show that each network user regularly visits a list of places, such as a building (also referred to as “hubs”) with some probability. The daily list of hubs, along with their corresponding visit probabilities, are referred to as a mobility profile. We also show that over a period of time (e.g., a week), a user may repeatedly follow a mixture of mobility profiles with certain probabilities associated with each of the profiles. Our analysis of the mobility trace data not only validate the existence of our so-called sociological orbits [13], but also demonstrate the advantages of exploiting it in performing hub-level location predictions. Moreover, such profile based location predictions are found not only to be more precise than a common statistical approach based on observed hub visitation frequencies, but also shown to incur a much lower overhead. We further illustrate the benefit of profiling users ’ mobility by discussing relevant work and suggesting applications in different types of wireless networks, including mobile ad hoc networks. Index Terms — WLAN mobility trace analysis, Sociological orbits, Mobility profiles, Location prediction, Mobile wireless networks







