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Information Gain Based Task Assignment In Spatial Crowdsourcing

Posted on:2018-09-12Degree:MasterType:Thesis
Country:ChinaCandidate:J T ZhangFull Text:PDF
GTID:2392330596490047Subject:Software engineering
Abstract/Summary:PDF Full Text Request
Along with the popularization of smart mobile devices and the rapid development of wireless networks,a new class of crowdsourcing,termed with spatial crowdsourcing,is drawing much attention,which enables workers to perform spatial tasks based on their positions.In this paper,we study an important spatial crowdsourcing problem,namely information gain based maximum task assignment(IG-MTA),in which each spatial task needs to be performed before its expiration time and workers are dynamically moving.The goal of IG-MTA problem is to maximize the number of spatial tasks that are assigned to workers while satisfying the quality requirement of collected answers.We first define this problem using integer linear programming.And towards this end,we propose two approximation approaches,namely greedy and extremum algorithms.Subsequently,in order to improve time efficiency and approximation accuracy,we propose an optimization methodology.Through extensive experiments on both real-world and synthetic datasets,we evaluate the performance of our proposed approaches.
Keywords/Search Tags:crowdsourcing, spatial crowdsourcing, spatial task assignment, approximation algorithm
PDF Full Text Request
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