DocumentCode :
1913926
Title :
Evaluating location predictors with extensive Wi-Fi mobility data
Author :
Song, Libo ; Kotz, David ; Jain, Ravi ; He, Xiaoning
Author_Institution :
Dartmouth Coll., Hanover, NH, USA
Volume :
2
fYear :
2004
fDate :
7-11 March 2004
Firstpage :
1414
Abstract :
Location is an important feature for many applications, and wireless networks can better serve their clients by anticipating client mobility. As a result, many location predictors have been proposed in the literature, though few have been evaluated with empirical evidence. This paper reports on the results of the first extensive empirical evaluation of location predictors, using a two-year trace of the mobility patterns of over 6,000 users on Dartmouth´s campus-wide Wi-Fi wireless network. We implemented and compared the prediction accuracy of several location predictors drawn from two major families of domain-independent predictors, namely Markov-based and compression-based predictors. We found that low-order Markov predictors performed as well or better than the more complex and more space-consuming compression-based predictors. Predictors of both families fail to make a prediction when the recent context has not been previously seen. To overcome this drawback, we added a simple fallback feature to each predictor and found that it significantly enhanced its accuracy in exchange for modest effort. Thus the Order-2 Markov predictor with fallback was the best predictor we studied, obtaining a median accuracy of about 72% for users with long trace lengths. We also investigated a simplification of the Markov predictors, where the prediction is based not on the most frequently seen context in the past, but the most recent, resulting in significant space and computational savings. We found that Markov predictors with this recency semantics can rival the accuracy of standard Markov predictors in some cases. Finally, we considered several seemingly obvious enhancements, such as smarter tie-breaking and aging of context information, and discovered that they had little effect on accuracy. The paper ends with a discussion and suggestions for further work.
Keywords :
Markov processes; mobile computing; mobility management (mobile radio); wireless LAN; Wi-Fi mobility data; client mobility; domain-independent predictor; location predictor; low-order Markov predictor; wireless network; Accuracy; Aging; Computer networks; Educational institutions; Helium; Mobile computing; Pervasive computing; Printing; Wireless application protocol; Wireless networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
INFOCOM 2004. Twenty-third AnnualJoint Conference of the IEEE Computer and Communications Societies
ISSN :
0743-166X
Print_ISBN :
0-7803-8355-9
Type :
conf
DOI :
10.1109/INFCOM.2004.1357026
Filename :
1357026
Link To Document :
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