[1]杨月平,王箭. 基于k-匿名的多源数据融合算法研究[J].计算机技术与发展,2017,27(05):102-107.
 YANG Yue-ping,WANG Jian. Research on Data Fusion Algorithm for Multi-party Based on k-anonymity[J].,2017,27(05):102-107.
点击复制

 基于k-匿名的多源数据融合算法研究()

《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
27
期数:
2017年05期
页码:
102-107
栏目:
安全与防范
出版日期:
2017-05-10

文章信息/Info

Title:
 Research on Data Fusion Algorithm for Multi-party Based on k-anonymity
文章编号:
1673-629X(2017)05-0102-06
作者:
 杨月平王箭
 南京航空航天大学 计算机科学与技术学院
Author(s):
 YANG Yue-pingWANG Jian
关键词:
 数据融合k-匿名自顶向下分类树属性分类树
Keywords:
 data integrationk-anonymoustop-to-down TDSattribute classification tree
分类号:
TP301.6
文献标志码:
A
摘要:
 数据在当今的网络环境下变得越来越重要,融合技术能够使不同数据提供者有效地融合他们的数据,并且提供给顾客可定制且有效的服务.数据融合技术通常采用每轮自顶向下选择候选者,并进行数据更新的方法,而这种方法随着数据量的增加使得数据融合的时间花费巨大,难以满足数据融合的时间需求.为了减少融合数据过程中的花费,提高多源数据融合的精度,结合自顶向下分类树算法TDS,属性分类树,提出了一种基于k-匿名的多源数据融合算法.利用GUI的Adult数据集进行仿真实验,并比较了数据融合的复杂度以及融合精度的差异.实验结果表明,所提出的基于k-匿名多源数据融合算法融合过程时间花费更少,可以达到理想的数据融合精度,同时还实现了多源数据的融合.
Abstract:
 In today’s network environment,data has become more and more important.Data integration technology can make the effective data integration for different data providers,and provide customized service for the customers.Data fusion technology usually adopts the top-down to choose candidates for updating data in each round,and with the increase of amount of data,this kind of method costs a lot of time,which is difficult to meet the time requirements of data fusion.In order to reduce the cost in the process of data fusion and improve the accuracy of data integration for multi-party,a multi-party data fusion algorithm based on k-anonymous combining with the top-to-down TDS algorithm and the attribute classification tree has been proposed.Simulation experiments have been conducted with Adult set of GUI as well as comparison of accuracy of data fusion with complexity.The experimental results show that the proposed algorithm has taken less time and effectively achieve ideal accuracy of data fusion.

相似文献/References:

[1]张登银 薄顺荣 许扬扬.边缘检测算法改进及其在QoE测定中的应用[J].计算机技术与发展,2009,(08):49.
 ZHANG Deng-yin,BO Shun-rong,XU Yang-yang.Improved Image Edge Detection Algorithm and Its Application in QoE Measurement[J].,2009,(05):49.
[2]王国芳 李腊元.基于LEACH和PEGASIS的节能可靠路由协议研究[J].计算机技术与发展,2009,(11):115.
 WANG Guo-fang,LI La-yuan.Research on Energy- Saving and Reliable Routing Protocol Based on LEACH and PEGASIS[J].,2009,(05):115.
[3]陶玉贵.车载GPS组合测速系统数据融合算法研究[J].计算机技术与发展,2009,(01):200.
 TAO Yu-gui.Study on Data Fusion Algorithm for GPS Integrated Vehicle Velocity Testing System[J].,2009,(05):200.
[4]王丽 杨全胜.多传感器数据融合的一种方法[J].计算机技术与发展,2008,(02):80.
 WANG Li,YANG Quan-sheng.A Method ,for Data Fusion of Multi - Sensor[J].,2008,(05):80.
[5]郭文普 孙继银 任俊.一种基于数据融合的分布式入侵检测系统[J].计算机技术与发展,2006,(02):217.
 GUO Wen-pu,SUN Ji-yin,REN Jun.A Kind of Distributed IDS Based on Data Fusion[J].,2006,(05):217.
[6]徐飞 钟联炯.一种多传感器数据融合仿真平台的构建与设计[J].计算机技术与发展,2006,(07):212.
 XU Fei,ZHONG Lian-jiong.Design of a Multi - sensor Data Fusion Simulation Platform[J].,2006,(05):212.
[7]王娟 王汝传 孙力娟.数据融合在传感器网络协议中的节能性分析[J].计算机技术与发展,2006,(11):4.
 WANG Juan,WANG Ru-chuan,SUN Li-juan.Energy - Saving Analysis of Data Aggregation in Sensor Network Protocol[J].,2006,(05):4.
[8]吴凡 胡斌杰.数据融合算法在ZigBee网络中的应用研究[J].计算机技术与发展,2011,(02):226.
 WU Fan,HU Bin-jie.Application Research of Data Fusion Algorithm in ZigBee Network[J].,2011,(05):226.
[9]李向阳 李玲娟 陈建新 徐小龙.面向情境感知的不确定性数据融合策略[J].计算机技术与发展,2012,(02):127.
 LI Xiang-yang,LI Ling-juan,CHEN Jian-xin,et al.Strategy of Uncertainty Data Fusion for Context-Awareness[J].,2012,(05):127.
[10]李向阳 李玲娟 陈建新 徐小龙.数据融合在智能电网中的应用研究[J].计算机技术与发展,2012,(04):215.
 LI Xiang-yang,LI Ling-juan,CHEN Jian-xin,et al.Research on Application of Data Fusion in Smart Grid[J].,2012,(05):215.
[11]季田辉,杨庚. 无线传感器网络中安全数据融合方法研究[J].计算机技术与发展,2014,24(07):162.
 JI Tian-hui,YANG Geng. Research on Security of Data Aggregation in Wireless Sensor Networks[J].,2014,24(05):162.
[12]唐亚鹏. 基于自适应加权数据融合算法的数据处理[J].计算机技术与发展,2015,25(04):53.
 TANG Ya-peng. Data Processing Based on Adaptive Weighted Data Fusion Algorithm[J].,2015,25(05):53.
[13]齐华[],李晓[],刘军[],等. 面向污水监控系统的自适应加权数据融合算法[J].计算机技术与发展,2015,25(04):221.
 QI Hua[],LI Xiao[],LIU Jun[],et al. Adaptive Weighted Data Fusion Algorithm Faced to Wastewater Monitoring System[J].,2015,25(05):221.
[14]吕传龙[],曹华杰[],刘浩东[]. 自平衡机器人中数据融合算法的研究与实现[J].计算机技术与发展,2016,26(08):35.
 LV Chuan-long[],CAO Hua-jie[],LIU Hao-dong[]. Research and Implementation of Data Fusion Algorithm for Self-balancing Robot[J].,2016,26(05):35.
[15]张淑雯,刘效武,孙雪岩. 基于多源融合的网络安全态势层次感知[J].计算机技术与发展,2016,26(10):77.
 ZHANG Shu-wen,LIU Xiao-wu,SUN Xue-yan. Hierarchical Awareness of Network Security Situation Based on Multi-source Fusion [J].,2016,26(05):77.
[16]谈苗苗,成孝刚,周凯,等. 基于ARIMA和灰色模型加权组合的短期交通流预测[J].计算机技术与发展,2016,26(11):77.
 TAN Miao-miao,CHENG Xiao-gang,ZHOU Kai,et al. Short-term Traffic Flow Forecasting Based on Combination of ARIMA and Gray Model[J].,2016,26(05):77.
[17]高晓利[],李捷[][]. 基于模糊变结构动态贝叶斯网的目标识别方法[J].计算机技术与发展,2017,27(09):17.
 GAO Xiao-li[],LI Jie[][]. A Target Identification Method of Dynamic Bayesian Network with Fuzzy Variable Structure[J].,2017,27(05):17.

更新日期/Last Update: 2017-07-07