DocumentCode :
47843
Title :
Differentially Private Frequent Itemset Mining via Transaction Splitting
Author :
Sen Su ; Shengzhi Xu ; Xiang Cheng ; Zhengyi Li ; Fangchun Yang
Author_Institution :
State Key Lab. of Networking & Switching Technol., Beijing Univ. of Posts & Telecommun., Beijing, China
Volume :
27
Issue :
7
fYear :
2015
fDate :
July 1 2015
Firstpage :
1875
Lastpage :
1891
Abstract :
Recently, there has been a growing interest in designing differentially private data mining algorithms. Frequent itemset mining (FIM) is one of the most fundamental problems in data mining. In this paper, we explore the possibility of designing a differentially private FIM algorithm which can not only achieve high data utility and a high degree of privacy, but also offer high time efficiency. To this end, we propose a differentially private FIM algorithm based on the FP-growth algorithm, which is referred to as PFP-growth. The PFP-growth algorithm consists of a preprocessing phase and a mining phase. In the preprocessing phase, to improve the utility and privacy tradeoff, a novel smart splitting method is proposed to transform the database. For a given database, the preprocessing phase needs to be performed only once. In the mining phase, to offset the information loss caused by transaction splitting, we devise a run-time estimation method to estimate the actual support of itemsets in the original database. In addition, by leveraging the downward closure property, we put forward a dynamic reduction method to dynamically reduce the amount of noise added to guarantee privacy during the mining process. Through formal privacy analysis, we show that our PFP-growth algorithm is ε-differentially private. Extensive experiments on real datasets illustrate that our PFP-growth algorithm substantially outperforms the state-of-the-art techniques.
Keywords :
data mining; data privacy; data reduction; ε-differentially private; FP-growth algorithm; PFP-growth algorithm; data utility; differentially private FIM algorithm; differentially private data mining algorithms; differentially private frequent itemset mining; downward closure property; dynamic reduction method; formal privacy analysis; information loss; privacy degree; run-time estimation method; smart splitting method; time efficiency; transaction splitting; Algorithm design and analysis; Data privacy; Itemsets; Noise; Privacy; Sensitivity; Frequent itemset mining; differential privacy; transaction splitting;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2015.2399310
Filename :
7029616
Link To Document :
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