Differentially private online task assignment in spatial crowdsourcing: A tree-based approach
With spatial crowdsourcing applications such as Uber and Waze deeply penetrated into everyday life, there is a growing concern to protect user privacy in spatial crowdsourcing. Particularly, locations of workers and tasks should be properly processed via certain privacy mechanism before reporting to...
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sg-smu-ink.sis_research-61382020-06-04T08:17:50Z Differentially private online task assignment in spatial crowdsourcing: A tree-based approach TAO, Qian TONG, Yongxin ZHOU, Zimu SHI, Yexuan CHEN, Lei XU, Ke With spatial crowdsourcing applications such as Uber and Waze deeply penetrated into everyday life, there is a growing concern to protect user privacy in spatial crowdsourcing. Particularly, locations of workers and tasks should be properly processed via certain privacy mechanism before reporting to the untrusted spatial crowdsourcing server for task assignment. Privacy mechanisms typically permute the location information, which tends to make task assignment ineffective. Prior studies only provide guarantees on privacy protection without assuring the effectiveness of task assignment. In this paper, we investigate privacy protection for online task assignment with the objective of minimizing the total distance, an important task assignment formulation in spatial crowdsourcing. We design a novel privacy mechanism based on Hierarchically Well-Separated Trees (HSTs). We prove that the mechanism is ε-Geo-Indistinguishable and show that there is a task assignment algorithm with a competitive ratio of O(1ε4logNlog2k), where is the privacy budget, N is the number of predefined points on the HST, and k is the matching size. Extensive experiments on synthetic and real datasets show that online task assignment under our privacy mechanism is notably more effective in terms of total distance than under prior differentially private mechanisms. 2020-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5135 info:doi/10.1109/ICDE48307.2020.00051 https://ink.library.smu.edu.sg/context/sis_research/article/6138/viewcontent/icde20_tao.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Computer Engineering |
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Computer Engineering TAO, Qian TONG, Yongxin ZHOU, Zimu SHI, Yexuan CHEN, Lei XU, Ke Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
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With spatial crowdsourcing applications such as Uber and Waze deeply penetrated into everyday life, there is a growing concern to protect user privacy in spatial crowdsourcing. Particularly, locations of workers and tasks should be properly processed via certain privacy mechanism before reporting to the untrusted spatial crowdsourcing server for task assignment. Privacy mechanisms typically permute the location information, which tends to make task assignment ineffective. Prior studies only provide guarantees on privacy protection without assuring the effectiveness of task assignment. In this paper, we investigate privacy protection for online task assignment with the objective of minimizing the total distance, an important task assignment formulation in spatial crowdsourcing. We design a novel privacy mechanism based on Hierarchically Well-Separated Trees (HSTs). We prove that the mechanism is ε-Geo-Indistinguishable and show that there is a task assignment algorithm with a competitive ratio of O(1ε4logNlog2k), where is the privacy budget, N is the number of predefined points on the HST, and k is the matching size. Extensive experiments on synthetic and real datasets show that online task assignment under our privacy mechanism is notably more effective in terms of total distance than under prior differentially private mechanisms. |
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TAO, Qian TONG, Yongxin ZHOU, Zimu SHI, Yexuan CHEN, Lei XU, Ke |
author_facet |
TAO, Qian TONG, Yongxin ZHOU, Zimu SHI, Yexuan CHEN, Lei XU, Ke |
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TAO, Qian |
title |
Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
title_short |
Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
title_full |
Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
title_fullStr |
Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
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Differentially private online task assignment in spatial crowdsourcing: A tree-based approach |
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differentially private online task assignment in spatial crowdsourcing: a tree-based approach |
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Institutional Knowledge at Singapore Management University |
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2020 |
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https://ink.library.smu.edu.sg/sis_research/5135 https://ink.library.smu.edu.sg/context/sis_research/article/6138/viewcontent/icde20_tao.pdf |
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