Haiyong Bao , Ronghai Xie , Zhehong Wang , Lu Xing , Hong-Ning Dai
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引用次数: 0
摘要
众包利用分布式移动设备进行任务分配,大大降低了服务成本。然而,现有的方案面临三大挑战,即数据隐私泄露,只关注单属性任务,以及无法适应动态任务更新。为了解决这些问题,我们提出了一种保护隐私的动态多属性任务分配方案(PDMA)。PDMA通过合并空间、时间和关键字约束来支持多属性范围搜索。它引入了hilbert属性树(HRAT)来高效地查询多属性任务,并利用hilbert r -树和计数布隆过滤器(CBF)来促进任务的动态更新。为了保护空间和时间属性的隐私,PDMA集成了改进的对称同态加密(iSHE)方案,而哈希函数则保留了关键字隐私的CBF。此外,我们还提出了一种安全三元匹配协议(CTP)和安全子集查询方案(Ssub),该方案将基于ish的密文比较协议与模拟三元内容可寻址存储器(TCAM)相结合,以加速关键字子集的匹配。安全性和性能分析表明,PDMA实现了选择查询攻击安全性(CQA2-security),具有实用性和高效性。
PDMA: Efficient and privacy-preserving dynamic task assignment with multi-attribute search in crowdsourcing
Crowdsourcing leverages distributed mobile devices for task allocation, significantly reducing service costs. However, existing schemes face three major challenges, i.e., data privacy leakage, focusing just on single-attribute tasks, and the inability to accommodate dynamic task updates. To address these issues, we propose a privacy-preserving dynamic multi-attribute task assignment scheme (PDMA). PDMA supports multi-attribute range searches by incorporating spatial, temporal, and keyword constraints. It introduces a hilbert attribute tree (HRAT) for efficient query of multi-attribute tasks and utilizes hilbert R-trees and counting bloom filters (CBF) to facilitate dynamic task updates. To preserve the privacy of spatial and temporal attributes, PDMA integrates the improved symmetric homomorphic encryption (iSHE) scheme, while hash functions preserve the CBF for keyword privacy. Additionally, we propose a secure ternary match protocol (CTP) and a secure subset query scheme (Ssub), which combine iSHE-based ciphertext comparison protocols with simulated ternary content addressable memory (TCAM) to accelerate keyword subset matching. Security and performance analysis demonstrate that PDMA achieves the chosen-query attack security (CQA2-security) and is both practical and efficient.
期刊介绍:
Computer Networks is an international, archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in the computer communications networking area. The audience includes researchers, managers and operators of networks as well as designers and implementors. The Editorial Board will consider any material for publication that is of interest to those groups.