Title
ShareLikesCrowd: Mobile analytics for participatory sensing and crowd-sourcing applications
Abstract
Data and continuous data streams from mobile users/devices are becoming increasingly important for numerous applications including urban modelling, transportation, and more recently for mobile crowd-sensing to support citizen journalism and participatory sensing where sensor informatics and social networking meet. While significant efforts have focused towards the analysis of mobile user data, a key challenge that needs to be addressed in order to realize the full-potential is to address the scalability issues of real-time data collection and processing at run time. By scalability, we refer to both the challenges of data capture from a large number of users, as well as the issues of energy consumed on individual devices as a result of that capture. In this paper, we present mobile/on-board data stream mining as an effective approach to address the scalability issues of mobile data collection and run-time processing and as a significant component of mobile run-time analytics. We present experimental evaluation using the Nokia mobile data challenge open track dataset to show the significant energy and bandwidth savings that mobile data stream mining can achieve with no significant loss of useful information in this process.
Year
DOI
Venue
2013
10.1109/ICDEW.2013.6547440
Data Engineering Workshops
Keywords
Field
DocType
data mining,mobile computing,Nokia mobile data challenge open track dataset,ShareLikesCrowd,citizen journalism,continuous data streams,crowd-sourcing applications,data capture,experimental evaluation,mobile analytics,mobile crowd-sensing,mobile data collection,mobile data stream mining,mobile devices,mobile run-time analytics,mobile user data,mobile users,on-board data stream mining,participatory sensing,real-time data collection,real-time data processing,run-time processing,sensor informatics,social networking,transportation,urban modelling
Mobile technology,Mobile computing,Data mining,Data stream mining,Mobile search,Computer science,Mobile database,Mobile Web,Analytics,Mobile broadband,Database
Conference
ISSN
ISBN
Citations 
1943-2895
978-1-4673-5302-1
11
PageRank 
References 
Authors
0.66
21
3
Name
Order
Citations
PageRank
Arkady Zaslavsky1113381.03
prem prakash jayaraman2473.81
Shonali Priyadarsini Krishnaswamy31439104.01