Title :
GN: A privacy preserving data publishing method based on generalization and noise techniques
Author :
Yeling Ma ; Jiyi Wang ; Jianmin Han ; Lixia Wang
Author_Institution :
Coll. of Math., Phys. & Inf. Eng., Zhejiang Normal Univ., Jinhua, China
Abstract :
Generalization is a popular technique to realize k-anonymity. However, when the distribution of original data is uneven, generalization will distort the data greatly, which makes the anonymous data low utility. To address the problem, we propose a GN method, which limits the degree of generalization by adding noise tuples during anonymization. We also propose a GN-Bottom-up algorithm to achieve k-anonymity based on GN method. Experiments show that the GN method can generate anonymous data with less distortion and higher classification accuracy than generalization method.
Keywords :
data privacy; electronic publishing; pattern classification; GN-bottom-up algorithm; anonymization; classification accuracy; data distortion; generalization degree; generalization technique; k-anonymity; low-utility anonymous data generation; noise technique; noise tuples; privacy preserving data publishing method; uneven data distribution; Accuracy; Algorithm design and analysis; Cancer; Classification algorithms; Clustering algorithms; Diseases; Noise; GN; generalization; k-anonymity; noise tuples;
Conference_Titel :
Granular Computing (GrC), 2013 IEEE International Conference on
Conference_Location :
Beijing
DOI :
10.1109/GrC.2013.6740411