Title :
Mobile user verification/identification using statistical mobility profile
Author :
Miao Lin ; Hong Cao ; Zheng, Vincent ; Chang, Kevin C. ; Krishnaswamy, Shonali
Author_Institution :
Data Analytics Dept., A*STAR, Singapore, Singapore
Abstract :
Recent studies show that ubiquitous smartphone data, e.g., the universal cell tower IDs, WiFi access points, etc., can be used to effectively recover individuals´ mobility. However, recording and releasing the data containing such information without anonymization can hurt individuals´ location privacy. Therefore, many anonymization methods have been used to sanitize these datasets before they are shared to the research community. In this paper, we demonstrate the idea of statistical mobile user profiling and identification based on anonymized datasets. Our insight is that, the mobility patterns inferred from different individuals´ data are identifiable by using the statistical profiles constructed from the patterns. Experimental results show that, the proposed method achieves a promising identification accuracy of 96% on average based on randomly chosen two users´ data, which makes our framework feasible for the application of inferring the fraud usage of the smartphones. Also, extensive experiments are conducted on the more challenging cases, showing a 59.5% identification accuracy for a total of 50 users based on 636 weekly data segments and a 56.1% accuracy for a total of 63 users based on 786 weekly data segments for two separate datasets. As the first work of such kind, our result suggests good possibility of developing location-based services or applications on the ubiquitous location anonymized datasets.
Keywords :
data privacy; fraud; mobile computing; smart phones; statistical analysis; anonymization methods; data recording; data releasing; fraud usage; individual location privacy; location-based services; mobile user identification; mobile user verification; mobility patterns; mobility profiling; smartphones; statistical mobile user profiling; statistical mobility profile; ubiquitous location anonymized datasets; ubiquitous smartphone data; Accuracy; Communities; Data privacy; Decision support systems; Feature extraction; IEEE 802.11 Standards; Poles and towers; anonymized data; mobility profile; user verification;
Conference_Titel :
Big Data and Smart Computing (BigComp), 2015 International Conference on
Conference_Location :
Jeju
DOI :
10.1109/35021BIGCOMP.2015.7072841