Abstract Privacy-preserving data mining (PPDM) is a novel approach that has emerged in the market to take care of privacy issues. The intention of PPDM is to build up data-mining techniques without raising the risk of mishandling of the data exploited to generate those schemes. The conventional works include numerous techniques, most of which employ some form of transformation on the original data to guarantee privacy preservation. However, these schemes are quite multifaceted and memory intensive, thus leading to restricted exploitation of these methods. Hence, this paper intends to develop a novel PPDM technique, which involves two phases, namely, data sanitization and data restoration. Initially, the association rules are extracted from the database before proceeding with the two phases. In both the sanitization and restoration processes, key extraction plays a major role, which is selected optimally using Opposition Intensity-based Cuckoo Search Algorithm, which is the modified format of Cuckoo Search Algorithm. Here, four research issues, such as hiding failure rate, information preservation rate, and false rule generation, and degree of modification are minimized using the adopted sanitization and restoration processes.
G. ShailajaChinmayee GuruC NiuZ ZhengF WuX GaoG ChenJyothi MandalaM ChandraSekhara RaoGang SunLiangjun SongDan LiaoHongfang YuVictor ChangSoohyung KimYonDohn ChungMaoguo GongKe PanYu XieL NiC LiX WangH JiangJ YuB ShaoG BianX QuanZ WangT WangZ ZhengM RehmaniS YaoZ HuoQ WangY ZhangX LuZ WangZ QinK RenX LiangX LiT LuanR LuX LinX ShenX ZhangC LiuS NepalS PandeyJ ChenL XuC JiangY ChenJ WangY RenJ Soria-ComasJ Domingo-FerrerD SnchezS MartnezJ HeL CaiX GuanX WangJ HeP ChengJ ChenM MareliB Twala
Jie ZouJuan LiSha sha TianYuan Xiang Li
Juan LiYuan Xiang LiSha sha TianJie Zou
Kang HuangYongquan ZhouWU Xiu-liQifang Luo