JCSE, vol. 5, no. 1, pp.71-84, 2011
DOI: 10.5626/JCSE.2011.5.1.071/
Identifying Unusual Days
Minkyong Kim, David Kotz
IBM Watson Research, Hawthorne, NY, USA
Dartmouth College, Hanover, NH, USA
Abstract: Pervasive applications such as digital memories or patient monitors collect a vast amount of
data. One key challenge in these systems is how to extract interesting or unusual information.
Because users cannot anticipate their future interests in the data when the data is stored, it
is hard to provide appropriate indexes. As location-tracking technologies, such as global positioning
system, have become ubiquitous, digital cameras or other pervasive systems record location
information along with the data. In this paper, we present an automatic approach to identify
unusual data using location information. Given the location information, our system identifies
unusual days, that is, days with unusual mobility patterns. We evaluated our detection system
using a real wireless trace, collected at wireless access points, and demonstrated its capabilities.
Using our system, we were able to identify days when mobility patterns changed and differentiate
days when a user followed a regular pattern from the rest. We also discovered general mobility
characteristics. For example, most users had one or more repeating mobility patterns, and
repeating mobility patterns did not depend on certain days of the week, except that weekends
were different from weekdays.
Keyword:
Mobility Characteristics, Wireless Network Trace Study, User Classification
Full Paper: 120 Downloads, 2262 View
|