DocumentCode
737103
Title
Scalable Spatial Crowdsourcing: A Study of Distributed Algorithms
Author
Alfarrarjeh, Abdullah ; Emrich, Tobias ; Shahabi, Cyrus
Volume
1
fYear
2015
fDate
15-18 June 2015
Firstpage
134
Lastpage
144
Abstract
Recently spatial crowd sourcing was introduced as a natural extension to traditional crowd sourcing allowing for tasks to have a geospatial component, i.e., A task can only be performed if a worker is physically present at the location of the task. The problem of assigning spatial tasks to workers in a spatial crowd sourcing system can be formulated as a weighted bipartite b-matching graph problem that can be solved optimally by existing methods for the minimum cost maximum flow problem. However, these methods are still too complex to run repeatedly for an online system, especially when the number of incoming workers and tasks increases. Hence, we propose a class of approaches that utilizes an online partitioning method to reduce the problem space across a set of cloud servers to construct independent bipartite graphs and solve the assignment problem in parallel. Our approaches solve the spatial task assignment approximately but competitive to the exact solution. We experimentally verify that our approximate approaches outperform the centralized and Map Reduce version of the exact approach with acceptable accuracy and thus suitable for online spatial crowd sourcing at scale.
Keywords
Bipartite graph; Clustering algorithms; Crowdsourcing; Performance evaluation; Runtime; Servers; Throughput; distributed spatial task assignment; online partitioning; spatial crowdsouring; spatial task assignment;
fLanguage
English
Publisher
ieee
Conference_Titel
Mobile Data Management (MDM), 2015 16th IEEE International Conference on
Conference_Location
Pittsburgh, PA, USA
Print_ISBN
978-1-4799-9971-2
Type
conf
DOI
10.1109/MDM.2015.55
Filename
7264314
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