...
首页> 外文期刊>Data technologies and applications >Distributed elephant herding optimization for grid-based privacy association rule mining
【24h】

Distributed elephant herding optimization for grid-based privacy association rule mining

机译:分布式大象放牧优化基于网格的隐私保护关联规则挖掘

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose Association rule mining generates the patterns and correlations from the database, which requires large scanning time, and the cost of computation associated with the generation of the rules is quite high. On the other hand, the candidate rules generated using the traditional association rules mining face a huge challenge in terms of time and space, and the process is lengthy. In order to tackle the issues of the existing methods and to render the privacy rules, the paper proposes the grid-based privacy association rule mining. Design/methodology/approach The primary intention of the research is to design and develop a distributed elephant herding optimization (EHO) for grid-based privacy association rule mining from the database. The proposed method of rule generation is processed as two steps: in the first step, the rules are generated using apriori algorithm, which is the effective association rule mining algorithm. In general, the extraction of the association rules from the input database is based on confidence and support that is replaced with new terms, such as probability-based confidence and holo-entropy. Thus, in the proposed model, the extraction of the association rules is based on probability-based confidence and holo-entropy. In the second step, the generated rules are given to the grid-based privacy rule mining, which produces privacy-dependent rules based on a novel optimization algorithm and grid-based fitness. The novel optimization algorithm is developed by integrating the distributed concept in EHO algorithm. Findings The experimentation of the method using the databases taken from the Frequent Itemset Mining Dataset Repository to prove the effectiveness of the distributed grid-based privacy association rule mining includes the retail, chess, T10I4D100K and T40I10D100K databases. The proposed method outperformed the existing methods through offering a higher degree of privacy and utility, and moreover, it is noted that the distributed nature of the association rule mining facilitates the parallel processing and generates the privacy rules without much computational burden. The rate of hiding capacity, the rate of information preservation and rate of the false rules generated for the proposed method are found to be 0.4468, 0.4488 and 0.0654, respectively, which is better compared with the existing rule mining methods. Originality/value Data mining is performed in a distributed manner through the grids that subdivide the input data, and the rules are framed using the apriori-based association mining, which is the modification of the standard apriori with the holo-entropy and probability-based confidence replacing the support and confidence in the standard apriori algorithm. The mined rules do not assure the privacy, and hence, the grid-based privacy rules are employed that utilize the adaptive elephant herding optimization (AEHO) for generating the privacy rules. The AEHO inherits the adaptive nature in the standard EHO, which renders the global optimal solution.
机译:关联规则挖掘生成目的从数据库模式和相关性,需要大的扫描时间和成本计算与生成有关规则是相当高的。候选人使用传统的生成规则关联规则挖掘面临着巨大的挑战时间和空间方面,和过程冗长的。现有的方法和呈现隐私规则,本文提出了基于网格的隐私关联规则挖掘。设计/方法/方法的主要意图的研究是设计和开发分布式大象放牧优化(EHO)基于网格的隐私保护关联规则挖掘从数据库中。一代处理两个步骤:在第一步,使用先天生成的规则算法,有效的协会规则挖掘算法。从输入数据库的关联规则基于信任和支持呢替换为新的术语,如自信和holo-entropy概率。因此,在该模型中提取的基于关联规则自信和holo-entropy概率。第二步,生成的规则的基于网格的隐私规则挖掘生产privacy-dependent规则基于一本小说优化算法和基于网格的适应性。这本小说是由优化算法在EHO集成分布式概念算法。使用数据库的方法频繁项集挖掘数据集库证明分布式的有效性基于网格的隐私保护关联规则挖掘包括零售、国际象棋、T10I4D100K和T40I10D100K数据库。优于现有方法提供更高程度的隐私和效用,而且,它指出分布式关联规则挖掘的本质便利并行处理和生成的隐私没有太多规则计算负担。隐藏能力,信息的速度保存和错误的规则生成的方法被发现分别为0.4468、0.4488和0.0654,这是更好的与现有规则挖掘方法。在一个分布式的方式执行网格细分输入数据,使用apriori-based规则框架矿业协会,这是修改的标准的先天holo-entropy和概率信心取代在标准的先验的支持和信心算法。隐私,因此,基于网格的隐私规则使用,利用自适应的大象吗放牧优化(AEHO)生成隐私规则。标准EHO自然呈现全局最优的解决方案。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号