KSKV: Key-Strategy for Key-Value Data Collection with Local Differential Privacy

Dan Zhao, Yang You,Chuanwen Luo,Ting Chen, Yang Liu

CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES(2024)

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摘要
In recent years, the research field of data collection under local differential privacy (LDP) has expanded its focus from elementary data types to include more complex structural data, such as set -value and graph data. However, our comprehensive review of existing literature reveals that there needs to be more studies that engage with key -value data collection. Such studies would simultaneously collect the frequencies of keys and the mean of values associated with each key. Additionally, the allocation of the privacy budget between the frequencies of keys and the means of values for each key does not yield an optimal utility tradeoff. Recognizing the importance of obtaining accurate key frequencies and mean estimations for key -value data collection, this paper presents a novel framework: the KeyStrategy Framework for Key -Value Data Collection under LDP. Initially, the Key -Strategy Unary Encoding (KS-UE) strategy is proposed within non -interactive frameworks for the purpose of privacy budget allocation to achieve precise key frequencies; subsequently, the Key -Strategy Generalized Randomized Response (KS-GRR) strategy is introduced for interactive frameworks to enhance the efficiency of collecting frequent keys through group -anditeration methods. Both strategies are adapted for scenarios in which users possess either a single or multiple key -value pairs. Theoretically, we demonstrate that the variance of KS-UE is lower than that of existing methods. These claims are substantiated through extensive experimental evaluation on real -world datasets, confirming the effectiveness and efficiency of the KS-UE and KS-GRR strategies.
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关键词
Key-value,local differential privacy,frequency estimation,mean estimation,data perturbation
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