自上而下的信息和隐私保护专业化

B. Fung, Ke Wang, Philip S. Yu
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引用次数: 681

摘要

以最特定的状态发布个人数据对个人隐私构成了威胁。本文提出了一种实用而有效的算法,用于确定数据的广义版本,该版本掩盖了敏感信息,并且仍然对建模分类有用。数据的泛化是通过以自顶向下的方式专门化或详细化信息级别来实现的,直到违反了最低隐私要求。这种自顶向下的专门化对于处理分类属性和连续属性都是自然而有效的。我们的方法利用了这样一个事实:数据通常包含用于分类的冗余结构。虽然泛化可能会消除一些结构,但其他结构会有所帮助。我们的结果表明,即使在高度严格的隐私要求下,分类质量也可以保持不变。这项工作对共享信息以实现互利和提高生产力的公共和私营部门都有很大的适用性。
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Top-down specialization for information and privacy preservation
Releasing person-specific data in its most specific state poses a threat to individual privacy. This paper presents a practical and efficient algorithm for determining a generalized version of data that masks sensitive information and remains useful for modelling classification. The generalization of data is implemented by specializing or detailing the level of information in a top-down manner until a minimum privacy requirement is violated. This top-down specialization is natural and efficient for handling both categorical and continuous attributes. Our approach exploits the fact that data usually contains redundant structures for classification. While generalization may eliminate some structures, other structures emerge to help. Our results show that quality of classification can be preserved even for highly restrictive privacy requirements. This work has great applicability to both public and private sectors that share information for mutual benefits and productivity.
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