Publication | Closed Access
Maximizing the number of worker's self-selected tasks in spatial crowdsourcing
192
Citations
17
References
2013
Year
Unknown Venue
Computational Social ScienceCrowd SimulationEngineeringData ScienceEdge ComputingParticipatory SensingSocial ComputingSpatial TasksHuman ComputationDynamic ProgrammingComputer ScienceMobile ComputingCrowdsourcingCommunicationCombinatorial OptimizationTask AllocationStatisticsSpatial Crowdsourcing
With the progress of mobile devices and wireless broadband, a new eMarket platform, termed spatial crowdsourcing is emerging, which enables workers (aka crowd) to perform a set of spatial tasks (i.e., tasks related to a geographical location and time) posted by a requester. In this paper, we study a version of the spatial crowd-sourcing problem in which the workers autonomously select their tasks, called the worker selected tasks (WST) mode. Towards this end, given a worker, and a set of tasks each of which is associated with a location and an expiration time, we aim to find a schedule for the worker that maximizes the number of performed tasks. We first prove that this problem is NP-hard. Subsequently, for small number of tasks, we propose two exact algorithms based on dynamic programming and branch-and-bound strategies. Since the exact algorithms cannot scale for large number of tasks and/or limited amount of resources on mobile platforms, we also propose approximation and progressive algorithms. We conducted a thorough experimental evaluation on both real-world and synthetic data to compare the performance and accuracy of our proposed approaches.
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