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Fuzzy-based Methods for Privacy-Preserving Data Mining

机译:基于模糊的隐私保护数据挖掘方法

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摘要

As more and more organizations are collecting and sharing data about their customers, there is a growing concern about violation of customer privacy. While some of the sharing is for the benefit of general public such as to understand disease behavior in medical research, individuals are concerned about violation of their privacy. The middle ground is found through privacy-preserving data mapping. Here, sensitive attributes of data are mapped to another domain so that original values are not revealed and yet the original associations are retained. In this paper, we compare a set of fuzzy-based mapping techniques in terms of their privacy-preserving property and their ability to retain the same relationship with other fields. In particular, our contribution is on four fronts: (i) modification of the fuzzy function definition, (ii) introducing seven ways to combine the different functional values for a data item into a single value, (iii) using several similarity metrics to compare the original data with the mapped data, (iv) measuring the effect of mapping on derived association rule. The paper presents preliminary results in this direction and proposes future work in this area.
机译:随着越来越多的组织正在收集和共享有关其客户的数据,人们越来越担心侵犯客户隐私。虽然某些共享是为了使普通大众受益,例如了解医学研究中的疾病行为,但个人仍担心侵犯其隐私。通过保护隐私的数据映射可以找到中间立场。在这里,数据的敏感属性被映射到另一个域,这样就不会显示原始值,而仍保留原始关联。在本文中,我们比较了一组基于模糊的映射技术,这些技术的隐私保护特性以及与其他字段保持相同关系的能力。特别是,我们的贡献来自四个方面:(i)修改模糊函数定义,(ii)引入七种方式将数据项的不同功能值组合为一个值,(iii)使用多个相似性指标进行比较具有映射数据的原始数据,(iv)测量映射对派生关联规则的影响。本文提出了朝着这个方向的初步结果,并提出了该领域的未来工作。

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