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Information Driven Evaluation of Data Hiding Algorithms

机译:信息驱动数据隐藏算法的评估

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Privacy is one of the most important properties an information system must satisfy. A relatively new trend shows that classical access control techniques are not sufficient to guarantee privacy when datamining techniques are used. Privacy Preserving Data Mining (PPDM) algorithms have been recently introduced with the aim of modifying the database in such a way to prevent the discovery of sensible information. Due to the large amount of possible techniques that can be used to achieve this goal, it is necessary to provide some standard evaluation metrics to determine the best algorithms for a specific application or context. Currently, however, there is no common set of parameters that can be used for this purpose. This paper explores the problem of PPDM algorithm evaluation, starting from the key goal of preserving of data quality. To achieve such goal, we propose a formal definition of data quality specifically tailored for use in the context of PPDM algorithms, a set of evaluation parameters and an evaluation algorithm. The resulting evaluation core process is then presented as a part of a more general three step evaluation framework, taking also into account other aspects of the algorithm evaluation such as efficiency, scalability and level of privacy.
机译:隐私是信息系统必须满足的最重要的属性之一。相对较新的趋势表明,当使用数据技术时,经典访问控制技术不足以保证隐私。最近已经引入了隐私保留数据挖掘(PPDM)算法,其目的是以一种方式修改数据库,以防止发现可明智的信息。由于可用于实现这一目标的大量可能的技术,有必要提供一些标准评估度量来确定特定应用程序或上下文的最佳算法。然而,目前,没有常见的参数集可以用于此目的。本文探讨了PPDM算法评估的问题,从保留数据质量的关键目标开始。为了实现这样的目标,我们提出了在PPDM算法的上下文中专门定制的数据质量的正式定义,这是一组评估参数和评估算法。然后,由此产生的评估核心过程作为更一般的三步评估框架的一部分,还考虑了算法评估的其他方面,例如效率,可扩展性和隐私级别。

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