Title :
A Space-Optimal Month-Scale Regularity Mining Method with One-Path and Distributed Server Constraints for Mobile Internet
Author :
Yamakami, Toshihiko
Author_Institution :
CTO Office, ACCESS, Tokyo, Japan
Abstract :
Mobile Internet becomes a first-class citizen of Internet in many advanced countries. As increased penetration leverages mobile application business opportunities, it is important to identify methodologies to serve mobile-specific demands. Regularity is one of the important measures to retain and enclose easy-come, easy-go mobile users. It is known that a user with multiple visits in one day with a long interval has a larger revisiting possibility in the following month than the others. The author investigates the minimum number of bits to incorporate this empirical law in order to cope with the two major mobile restrictions: distributed server environments and large data stream. The author shows that the method with 2+1 bits can provide usable results to classify regular users in the case study. It gives the lower-bound of memory needed to identify revisiting users under mobile-specific constraints.
Keywords :
Internet; data mining; mobile computing; distributed server constraints; distributed server environments; mobile Internet; mobile users; mobile-specific constraints; mobile-specific demands; month-scale regularity mining method; space-optimal regularity mining method; Data mining; Humans; Large-scale systems; Mobile handsets; Web and internet services; Web server; Web services; Mobile Internet; regularity; stream mining;
Conference_Titel :
Mobile Business, 2009. ICMB 2009. Eighth International Conference on
Conference_Location :
Dalian
Print_ISBN :
978-0-7695-3691-0
DOI :
10.1109/ICMB.2009.42