会议专题

Effective Privacy Preservation over Composite Events with Markov Correlations

  With the rapid development of radio frequency identification (RFID) and sensor networks, complex event processing (CEP) has attracted extensive attention.Meanwhile, privacy preservation techniques towards composite events are becoming increasingly important.However, practical applications may generate a large number of uncertain data due to inaccurate reading and missing reading.An effective method to model such uncertain data is leveraging the Markov model while conducting CEP over it may cause severe privacy leakage.In this paper, we focus on the privacy preservation on the composite events modeled by Markov chains.Due to the inherent uncertainty and correlations of the data, traditional techniques for privacy preservation fail to support the problem.Specifically, we propose two methods (Type_S and Instance_S) with different optimization goals in processing efficiency and the published result amount.The empirical evaluation verifies the efficiency and applicability of our proposed methods.

complex event processing privacy preservation Markov chain uncertainty

Fangfang Li Ning Wang Yu Gu Zhe Chen

College of Computer Science and Engineering Northeastern University Shenyang, China

国际会议

The 13th Web Information Systems and Applications Conference(第十三届全国web信息系统及其应用学术会议)(WISA2016)、The 1st Symposium on Big Data Processing and Analysis)( BDPA 2016)第一届全国大数据处理与分析学术研讨会、The 1st Workshop on Information System Security)(ISS2016)(第一届全国信息系统安全研讨会

武汉

英文

215-220

2016-09-23(万方平台首次上网日期,不代表论文的发表时间)