A comprehensive review on privacy preserving data mining
Item Type:Journal Article
Citation:Aldeen Y.A.A.S, Salleh M, Razzaque M.A, A comprehensive review on privacy preserving data mining, SpringerPlus, 4, 1, 2015, 1 - 36
art%3A10.1186%2Fs40064-015-1481-x.pdf (PDF) 1.146Mb
Preservation of privacy in data mining has emerged as an absolute prerequisite for exchanging confidential information in terms of data analysis, validation, and publish- ing. Ever-escalating internet phishing posed severe threat on widespread propagation of sensitive information over the web. Conversely, the dubious feelings and conten- tions mediated unwillingness of various information providers towards the reliability protection of data from disclosure often results utter rejection in data sharing or incorrect information sharing. This article provides a panoramic overview on new per - spective and systematic interpretation of a list published literatures via their meticu- lous organization in subcategories. The fundamental notions of the existing privacy preserving data mining methods, their merits, and shortcomings are presented. The current privacy preserving data mining techniques are classified based on distortion, association rule, hide association rule, taxonomy, clustering, associative classification, outsourced data mining, distributed, and k-anonymity, where their notable advantages and disadvantages are emphasized. This careful scrutiny reveals the past development, present research challenges, future trends, the gaps and weaknesses. Further signifi- cant enhancements for more robust privacy protection and preservation are affirmed to be mandatory.
Author: RAZZAQUE, MOHAMMAD
Type of material:Journal Article
Availability:Full text available