D. Dhinakaran , S. Gopalakrishnan , D. Selvaraj , M.S. Girija , G. Prabaharan
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引用次数: 0
摘要
在这个数据驱动决策的时代,安全有效地从分布式数据集中提取知识是非常重要的。然而,在外包数据任务中,如频繁的项目集挖掘,隐私是一个重要的问题。难点在于在提供数据洞察力的同时确保敏感数据的安全。首先,本文提出了一种新的多云隐私保护方法,该方法包括两个主要组件,即事务处理和分配器模块和Facile Hash算法(FHA),用于提取频繁项集。所有这些组件一起工作,以保护数据的隐私,无论它在哪里,在传输阶段或计算阶段,即使它是原始数据或处理过的数据,在不同的分布式云平台上。频繁项集挖掘所涉及的复杂性促使我们引入了Apriori with Tid Reduction (ATid)算法,考虑到Tid Reduction概念对挖掘过程的可扩展性和计算操作的改进。我们对几个数据集进行了性能评估,结果表明我们提出的框架比现有方法实现了更高的性能,并且与最佳替代方案相比,加密和解密过程的计算时间减少了高达25%。与表明通信开销有所改善的最先进的评估指标相比,它还显示出通信成本降低了大约15%,并且随着事务数量的增加显示出可伸缩性。•介绍了一个多云隐私框架,包括Facile Hash算法和Transaction Hewer and Allocator。•增强可扩展性使用Tid算法与Tid减少。
Mining privacy-preserving association rules using transaction hewer allocator and facile hash algorithm in multi-cloud environments
In this era of data-driven decision-making, it is important to securely and efficiently extract knowledge from distributed datasets. However, in outsourced data for tasks like frequent itemset mining, privacy is an important issue. The difficulty is to secure sensitive data while delivering the insights of the data. First, this paper proposes a new multi-cloud approach to preserve privacy, which includes two main components, named the Transaction Hewer and Allocator module and the Facile Hash Algorithm (FHA), in extracting the frequent itemset. All these components work together to protect the privacy of the data, wherever it is, during the transmission phase or the computation phase, even if it is raw data or processed data, on the different distributed cloud platforms. The complexities involved in the mining of frequent itemsets led us to introduce the Apriori with Tid Reduction (ATid) algorithm considering scalability and computational operational improvements to the mining process due to the Tid Reduction concept. We conduct performance evaluation on several datasets and show that our proposed framework achieves higher performance than existing methods, and encryption and decryption processes reduce the computational time by up to 25 % compared to the best alternative. It also exhibits approximately 15 % reduction in communication costs and displays scalability with the growing number of transactions, compared to the state-of-the-art evaluation metrics that indicate improved communication overhead.
•
Introduces a multi-cloud privacy framework with Facile Hash Algorithm and Transaction Hewer and Allocator.
•
Enhances scalability using ATid algorithm with Tid Reduction.