Title :
Incremental Clustering of Mobile Objects
Author :
Elnekave, Sigal ; Last, Mark ; Maimon, Oded
Author_Institution :
Ben-Gurion Univ., Beer- Sheva
Abstract :
Moving objects are becoming increasingly attractive to the data mining community due to continuous advances in technologies like GPS, mobile computers, and wireless communication devices. Mining spatio-temporal data can benefit many different functions: marketing team managers for identifying the right customers at the right time, cellular companies for optimizing the resources allocation, web site administrators for data allocation matters, animal migration researchers for understanding migration patterns, and meteorology experts for weather forecasting. In this research we use a compact representation of a mobile trajectory and define a new similarity measure between trajectories. We also propose an incremental clustering algorithm for finding evolving groups of similar mobile objects in spatio-temporal data. The algorithm is evaluated empirically by the quality of object clusters (using Dunn and Rand indexes), memory space efficiency, execution times, and scalability (run time vs. number of objects).
Keywords :
data mining; mobile computing; pattern clustering; GPS; incremental clustering; incremental clustering algorithm; mobile computers; mobile objects; mobile trajectory; moving objects; spatio-temporal data mining; wireless communication devices; Animals; Clustering algorithms; Data mining; Global Positioning System; Marketing management; Meteorology; Mobile computing; Resource management; Weather forecasting; Wireless communication;
Conference_Titel :
Data Engineering Workshop, 2007 IEEE 23rd International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-1-4244-0832-0
Electronic_ISBN :
978-1-4244-0832-0
DOI :
10.1109/ICDEW.2007.4401044