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Hiding Sequential and Spatiotemporal Patterns

机译:隐藏顺序和时空模式

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摘要

The process of discovering relevant patterns holding in a database was first indicated as a threat to database security by O'Leary in [CHECK END OF SENTENCE]. Since then, many different approaches for knowledge hiding have emerged over the years, mainly in the context of association rules and frequent item sets mining. Following many real-world data and application demands, in this paper, we shift the problem of knowledge hiding to contexts where both the data and the extracted knowledge have a sequential structure. We define the problem of hiding sequential patterns and show its NP-hardness. Thus, we devise heuristics and a polynomial sanitization algorithm. Starting from this framework, we specialize it to the more complex case of spatiotemporal patterns extracted from moving objects databases. Finally, we discuss a possible kind of attack to our model, which exploits the knowledge of the underlying road network, and enhance our model to protect from this kind of attack. An exhaustive experiential analysis on real-world data sets shows the effectiveness of our proposal.
机译:O'Leary最初在[CHECK END OF SENTENCE]中将发现数据库中相关模式的发现过程威胁到数据库安全。从那时起,多年来,出现了许多不同的知识隐藏方法,主要是在关联规则和频繁的项目集挖掘中。遵循许多实际数据和应用需求,在本文中,我们将知识隐藏问题转移到数据和提取的知识都具有顺序结构的上下文中。我们定义隐藏顺序图案的问题并显示其NP硬度。因此,我们设计了启发式算法和多项式清理算法。从此框架开始,我们将其专门用于从运动对象数据库中提取的时空模式的更复杂情况。最后,我们讨论了对我们模型的一种可能的攻击,该攻击利用了基础道路网络的知识,并增强了我们的模型以防止此类攻击。对实际数据集的详尽的经验分析表明了我们建议的有效性。

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