Frequent Itemset Mining with Hadamard Response Under Local Differential Privacy

被引:2
|
作者
Liu, Haijiang [1 ]
Bai, Xiangyu [1 ]
Ma, Xuebin [1 ]
Cui, Lianwei [2 ]
机构
[1] Inner Mongolia Univ, Inner Mongolia Key Lab Wireless Networking & Mobi, Hohhot, Peoples R China
[2] Inner Mongolia Big Data Dev Author, Hohhot, Peoples R China
关键词
local differential privacy; Hadamard response; frequent itemset mining;
D O I
10.1109/iceiec49280.2020.9152248
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Frequent itemset mining is a basic data mining task and has many applications in other data mining tasks. However, users' personal privacy information will be leaked in the mining process. In recent years, application of local differential privacy protection models to mine frequent itemsets is a relatively reliable and secure protection method. Local differential privacy means that users first perturb the original data and then send these data to the aggregator, preventing the aggregator from revealing the user's private information. Data mining using local differential privacy involves two major problems. The first one is that the accuracy of the results after mining is low, and the other one is that the user transmits a large amount of data to the server, which results in higher communication costs. In this study, we demonstrate that the Hadamard response (HR) algorithm improves the accuracy of the results and reduces the communication cost from k to log k. Finally, we use the Frequent pattern tree (FP-tree) algorithm for frequent itemset mining to compare the existing algorithms.
引用
收藏
页码:49 / 52
页数:4
相关论文
共 50 条
  • [41] Survey of differential privacy in frequent pattern mining
    Ding, Li-Ping
    Lu, Guo-Qing
    Tongxin Xuebao/Journal on Communications, 2014, 35 (10): : 200 - 209
  • [42] PrivTrie: Effective Frequent Term Discovery under Local Differential Privacy
    Wang, Ning
    Xiao, Xiaokui
    Yang, Yin
    Ta Duy Hoang
    Shin, Hyejin
    Shin, Junbum
    Yu, Ge
    2018 IEEE 34TH INTERNATIONAL CONFERENCE ON DATA ENGINEERING (ICDE), 2018, : 821 - 832
  • [43] A Survey Paper on Frequent Itemset Mining
    Sastry, J. S. V. R. S.
    Suresh, V
    INTERNATIONAL CONFERENCE ON COMPUTER VISION AND MACHINE LEARNING, 2019, 1228
  • [44] Frequent Itemset Mining in Multirelational Databases
    Jimenez, Aida
    Berzal, Fernando
    Cubero, Juan-Carlos
    FOUNDATIONS OF INTELLIGENT SYSTEMS, PROCEEDINGS, 2009, 5722 : 15 - 24
  • [45] Verified Programs for Frequent Itemset Mining
    Loulergue, Frederic
    Whitney, Christopher D.
    2018 IEEE SMARTWORLD, UBIQUITOUS INTELLIGENCE & COMPUTING, ADVANCED & TRUSTED COMPUTING, SCALABLE COMPUTING & COMMUNICATIONS, CLOUD & BIG DATA COMPUTING, INTERNET OF PEOPLE AND SMART CITY INNOVATION (SMARTWORLD/SCALCOM/UIC/ATC/CBDCOM/IOP/SCI), 2018, : 1516 - 1523
  • [46] A primer to frequent itemset mining for bioinformatics
    Naulaerts, Stefan
    Meysman, Pieter
    Bittremieux, Wout
    Trung Nghia Vu
    Vanden Berghe, Wim
    Goethals, Bart
    Laukens, Kris
    BRIEFINGS IN BIOINFORMATICS, 2015, 16 (02) : 216 - 231
  • [47] Oracle and Vertica for Frequent Itemset Mining
    Kyurkchiev, Hristo
    Kaloyanova, Kalinka
    DATA MINING AND BIG DATA, DMBD 2016, 2016, 9714 : 77 - 85
  • [48] An efficient frequent itemset mining algorithm
    Luo, Ke
    Zhang, Xue-Mao
    PROCEEDINGS OF 2007 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS, VOLS 1-7, 2007, : 756 - 761
  • [49] Privacy preserving frequent itemset mining: Maximizing data utility based on database reconstruction
    Li, Shaoxin
    Mu, Nankun
    Le, Junqing
    Liao, Xiaofeng
    COMPUTERS & SECURITY, 2019, 84 : 17 - 34
  • [50] A parallel algorithm for frequent itemset mining
    Li, L
    Zhai, DH
    Fan, J
    PARALLEL AND DISTRIBUTED COMPUTING, APPLICATIONS AND TECHNOLOGIES, PDCAT'2003, PROCEEDINGS, 2003, : 868 - 871