A Deep Q-Learning Sanitization Approach for Privacy Preserving Data Mining

Usman Ahmed, Chun-Wei Lin, Gautam Srivastava, Y. Djenouri
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引用次数: 7

Abstract

With the establishment of the 5G network, a number of data-intensive applications will be developed. Privacy of information over the network is increasingly relevant, and require protection. The privacy of information while utilizing data is a trade-off that needs to be addressed. In this paper, we propose data privacy of 5G connected devices over heterogeneous networks (5G-Hetnets). A deep Q learning (DQL) based technique is applied to sensitize sensitive information from a given database while keeping the balance between privacy protection and knowledge discovery during the sanitization process. It takes transaction states as input and results in state and action pair. The DQL discovers the transactions dynamically, then the sanitization operation hide the sensitive information by minimizing side effects. The proposed approach shows significant improvement of performance compared to greedy and meta-heuristics and heuristics approaches.
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一种用于隐私保护数据挖掘的深度q -学习净化方法
随着5G网络的建立,许多数据密集型应用将被开发出来。网络上的信息隐私越来越重要,需要保护。在利用数据的同时,信息的隐私是一个需要解决的权衡。在本文中,我们提出了5G连接设备在异构网络(5G- hetnets)上的数据隐私。应用基于深度Q学习(DQL)的技术对给定数据库中的敏感信息进行敏感化处理,同时在处理过程中保持隐私保护和知识发现之间的平衡。它将事务状态作为输入,并产生状态和操作对。DQL动态地发现事务,然后清理操作通过最小化副作用来隐藏敏感信息。与贪心算法、元启发式算法和启发式算法相比,该方法的性能有了显著提高。
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