2 research outputs found
Preservation of confidential information privacy and association rule hiding for data mining: a bibliometric review
In this era of technology, data of business organizations are growing with acceleration. Mining hidden patterns from this huge
database would benefit many industries improving their decision-making processes. Along with the non-sensitive information,
these databases also contain some sensitive information about customers. During the mining process, sensitive information about
a person can get leaked, resulting in a misuse of the data and causing loss to an individual. The privacy preserving data mining
can bring a solution to this problem, helping provide the benefits of mined data along with maintaining the privacy of the sensitive
information. Hence, there is a growing interest in the scientific community for developing new approaches to hide the mined
sensitive information. In this research, a bibliometric review is carried out during the period 2010 to 2018 to analyze the growth
of studies regarding the confidential information privacy preservation through approaches addressed to the hiding of association
rules of data