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Privacy-Preserving Batch-based Task Assignment in Spatial Crowdsourcing with Untrusted Server

Maocheng Li, Jiachuan Wang, Libin Zheng, Han Wu, Peng Cheng, Lei Chen, Xuemin Lin

202124 citationsDOI

Abstract

In this paper, we study the privacy-preserving task assignment problem in spatial crowdsourcing, where the locations of both workers and tasks, prior to their release to the server, are perturbed with Geo-Indistinguishability (a differential privacy notion for location-based systems). Different from the previously studied online setting, where each task is assigned immediately upon arrival, we target the batch-based setting, where the server maximizes the number of successfully assigned tasks after a batch of tasks arrive. To achieve this goal, we propose the k-Switch solution, which first divides the workers into small groups based on the perturbed distance between workers/tasks, and then utilizes Homomorphic Encryption (HE) based secure computation to enhance the task assignment. Furthermore, we expedite HE-based computation by limiting the size of the small groups under k. Extensive experiments demonstrate that, in terms of the number of successfully assigned tasks, the k-Switch solution improves batch-based baselines by 5.9X and the existing online solution by 1.74X, with no privacy leak.

Topics & Concepts

CrowdsourcingComputer scienceHomomorphic encryptionTask (project management)Differential privacyComputationServerLimitingEncryptionComputer networkData miningAlgorithmWorld Wide WebEngineeringMechanical engineeringEconomicsManagementPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingCryptography and Data Security
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