DocumentCode
3706564
Title
Towards Redundancy-Aware Data Utility Maximization in Crowdsourced Sensing with Smartphones
Author
Juan Li;Yanmin Zhu;Jiadi Yu;Qian Zhang;Lionel M. Ni
Author_Institution
Dept. of Comput. Sci. &
fYear
2015
Firstpage
899
Lastpage
908
Abstract
This paper studies the critical problem of maximizing the aggregate data utility under budget constraint in mobile crowd sourced sensing. This problem is particularly challenging given the redundancy in sensing data, self-interested and strategic user behaviors, and private cost information of smartphones. Most of existing approaches do not consider the important performance objective - maximizing the redundancy-aware data utility of sensing data collected from smartphones. Furthermore, they do not consider the practical constraint on budget. In this paper, we propose a combinatorial auction mechanism based on a reverse auction framework. It consists of an approximation algorithm for winning bids determination and a critical payment scheme. The approximation algorithm guarantees a constant approximation ratio at polynomial-time complexity. The critical payment scheme guarantees truthful bidding. The rigid theoretical analysis demonstrates that our mechanism achieves truthfulness, individual rationality, computational efficiency, and budget feasibility. Extensive simulations show that the proposed mechanism produces high redundancy-aware data utility.
Keywords
"Sensors","Smart phones","Noise measurement","Redundancy","Data models","Noise level","Aggregates"
Publisher
ieee
Conference_Titel
Parallel Processing (ICPP), 2015 44th International Conference on
ISSN
0190-3918
Type
conf
DOI
10.1109/ICPP.2015.99
Filename
7349645
Link To Document