事件掩蔽序列原型的生成

A. Valls, Cristina Gómez-Alonso, V. Torra
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引用次数: 5

摘要

分类数据序列通常用于表示事件序列。为了将这些数据传输给第三方进行分析,可以采用屏蔽方法来满足隐私法并避免泄露敏感信息。屏蔽方法会扭曲数据,以牺牲一些信息的损失为代价来保护隐私。存在着不同的方法,每一种方法都试图在信息披露的风险和信息丢失之间找到一个好的平衡点。微聚集是现有的屏蔽方法之一。在微聚集中,自动建立小集群,集群成员的值由该集群原型的值代替。由于微聚集是一个np困难问题,启发式方法已经被开发出来。现有的方法主要用于数值和分类数据。将这些方法扩展到分类数据序列需要定义用于聚类和原型的特殊算法。人工智能提供了适用于符号数据的技术和工具。在我们的环境中,序列是根据分类(符号)值定义的,这种AI技术具有特殊的相关性。在本文中,我们将利用它们提出一种新的方法来生成一小组范畴值序列的原型。这些结果可以稍后用于例如微聚集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation of Prototypes for Masking Sequences of Events
Sequences of categorical data are in common use to represent sequences of events. In order to transfer such data to third parties for their analysis, masking methods can be applied to satisfy privacy laws and avoid the disclosure of sensitive information. Masking methods distort the data so that privacy is kept at the expenses of some information loss. %Different methods exist, each one trying to find a good trade-off between the risk of disclosure and the information loss. Microaggregation is one of the existing masking methods. In microaggregation small clusters are automatically built and the values of the members of a cluster are substituted by the values of the prototype of that cluster. Due to the fact that microaggregation is an NP-hard problem, heuristic approaches have been developed. Existing methods are mainly devoted to numerical and categorical data. The extension of these methods to sequences of categorical data requires the definition of special algorithms for clustering and prototyping.Artificial Intelligence offers techniques and tools that are appropriate for symbolic data. As in our context the sequences are defined in terms of categorical (symbolic) values, such AI techniques are of special relevance. In this paper, we will use them to propose a new method for generating the prototype of a small group of sequences of categorical values. These results can later be used in e.g. microaggregation.
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