From Trajectory Modeling to Social Habits and Behaviors Analysis
In recent years, the widespread of mobile devices has made easier and popular the activities of recording locations visited by users and of inferring their trajectories. The availability of such large amount of spatio-temporal data opens new challenges to automatically extract information and get valuable knowledge. The many aspects of this issue have aroused the interest of researchers in several areas, such as information retrieval, data mining, context-aware computing, security and privacy issues, urban planning, and transport management. Recently, there has been a strong interest in understanding how people move during their common daily activities in order to get information about their behaviors and habits. In this paper we describe considerable recent research works related to the analysis of mobile spatio-temporal data, focusing on the study of social habits and behaviors. We provide a general perspective on studies on human mobility by depicting and comparing methods and algorithms, highlighting some critical issues related to information extraction from spatio-temporal data, and future research directions.
2016
2016-08-29 15:04:25
1033
Trajectory modeling, Social habits and behaviors, Spatio-temporal data, Data mining
r6
Donatella
Gubiani
70
Marco
Pavan
70
COBISS_ID
3
4580347
DOI
15
10.1007/978-3-319-40585-8_33
NUK URN
18
URN:SI:UNG:REP:LPJL0OAN
RecentTrendsInSocialSystems_33.pdf
668396
Predstavitvena datoteka
2016-10-27 08:34:15
0
Izvorni URL
2016-10-27 08:33:12