Login / Signup

Efficiently hiding sensitive itemsets with transaction deletion based on genetic algorithms.

Chun-Wei Jerry LinBinbin ZhangKuo-Tung YangTzung-Pei Hong
Published in: TheScientificWorldJournal (2014)
Data mining is used to mine meaningful and useful information or knowledge from a very large database. Some secure or private information can be discovered by data mining techniques, thus resulting in an inherent risk of threats to privacy. Privacy-preserving data mining (PPDM) has thus arisen in recent years to sanitize the original database for hiding sensitive information, which can be concerned as an NP-hard problem in sanitization process. In this paper, a compact prelarge GA-based (cpGA2DT) algorithm to delete transactions for hiding sensitive itemsets is thus proposed. It solves the limitations of the evolutionary process by adopting both the compact GA-based (cGA) mechanism and the prelarge concept. A flexible fitness function with three adjustable weights is thus designed to find the appropriate transactions to be deleted in order to hide sensitive itemsets with minimal side effects of hiding failure, missing cost, and artificial cost. Experiments are conducted to show the performance of the proposed cpGA2DT algorithm compared to the simple GA-based (sGA2DT) algorithm and the greedy approach in terms of execution time and three side effects.
Keyphrases
  • big data
  • machine learning
  • pet ct
  • health information
  • deep learning
  • electronic health record
  • healthcare
  • artificial intelligence
  • genome wide
  • body composition
  • adverse drug
  • neural network
  • dna methylation