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A K-anonymity clustering algorithm based on the information entropy

机译:一种基于信息熵的k-匿名聚类算法

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Data anonymization techniques are the main way to achieve privacy protection, and as a classical anonymity model, K-anonymity is the most effective and frequently-used. But the majority of K-anonymity algorithms can hardly balance the data quality and efficiency, and ignore the privacy of the data to improve the data quality. To solve the problems above, by introducing the concept of “diameter” and a new clustering criterion based on the parameter of the maximum threshold of equivalence classes, we proposed a K-anonymity clustering algorithm based on the information entropy. The results of experiments showed that both the algorithm efficiency and data security are improved, and meanwhile the total information loss is acceptable, so the proposed algorithm has some practicability in application.
机译:数据匿名化技术是实现隐私保护的主要方式,作为经典匿名模型,k-匿名是最有效和常用的。但大多数K-匿名算法几乎无法平衡数据质量和效率,并忽略数据的隐私以提高数据质量。为了解决上述问题,通过引入“直径”的概念和基于等效类的最大阈值的参数的“直径”和新的聚类标准,我们提出了一种基于信息熵的k-匿名聚类算法。实验结果表明,算法效率和数据安全性都得到了改善,同时总信息丢失是可接受的,因此所提出的算法在应用中具有一些实用性。

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