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(p,k)匿名数据集的增量更新算法 被引量:3

A dynamic update algorithm on (p,k) anonymity
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摘要 随着大数据时代的到来,数据数量呈指数形式增长,一次性发布所有的数据已无法满足实时掌握数据的需求,提出(p,k)匿名增量更新算法,动态更新匿名发布数据表。为避免数据动态更新时造成隐私泄露,算法利用加密技术对敏感属性进行保护,建立暂存表及临时表辅助待更新数据及时插入。(p,k)匿名增量更新算法改善了传统算法无法实时更新数据的问题,保证了数据的实时性,并利用加密技术增强了数据的隐私保护性。实验结果表明,(p,k)匿名增量更新算法在较少信息损失量以及较快更新速率的情况下,实现了数据实时更新的目标。 With the arrival of the era of big data,the number of data increases exponentially,onetime release of all data can no longer meet the needs of real-time data,so an incremental update algorithm on(p,k)anonymity is proposed to dynamically update anonymous publication data tables.In order to avoid privacy leakage when data is dynamically updated,the algorithm uses encryption technology to protect sensitive attributes.We create a temporary table and an interim table to aid the timely insertion of updated data.The incremental update algorithm on(p,k)anonymity improves the problem that traditional algorithms cannot update data in real time,ensures the real-time performance of data,and uses encryption technology to enhance data privacy protection.Experimental results show that the incremental update algorithm on(p,k)anonymity achieves the goal of real-time data update with less information loss and faster update rate.
作者 贾俊杰 闫国蕾 邢里程 陈菲 JIA Jun-jie;YAN Guo-lei;XING Li-cheng;CHEN Fei(School of Computer Science and Engineering,Northwest Normal University,Lanzhou 730070,Chin)
出处 《计算机工程与科学》 CSCD 北大核心 2018年第7期1206-1212,共7页 Computer Engineering & Science
基金 兰州市科技发展计划项目(20141256) 甘肃省档案科技项目(2016-09)
关键词 (p k)匿名 动态更新 隐私保护 敏感属性加密 (p k) anonymity dynamic update privacy protection sensitive attribute encryption
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