一个隐私保护警报关联模型

Jin Ma, Xiuzhen Chen, Jian-hua Li
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引用次数: 0

摘要

数据持有者需要共享他们为关联和分析目的检测到的警报数据。在这种情况下,隐私问题成为一个主要问题。本文提出了一个具有隐私保护能力的入侵警报关联和分析模型。采用改进的k-匿名方法保护原始入侵警报,该方法保留了受干扰数据记录内的警报规则。将该隐私保护方法与典型的FP-tree频繁模式挖掘方法和WINEPI序列模式挖掘算法相结合,建立了一个警报关联模型,很好地平衡了警报关联和隐私保护。实验结果表明,与原FP-tree和WINEPI算法相比,该模型在相关度和分析结果上接近,且敏感属性得到了很好的保留。
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A privacy-preserving alert correlation model
Data holders need to share the alerts data that they detected for correlation and analysis purpose. In such cases, privacy issues turn out to be a major concern. This paper proposes a model to correlate and analyze intrusion alerts with privacy-preserving capability. The raw intrusion alerts are protected by improved k-anonymity method, which preserves the alert regulation inside disturbed data records. Combining this privacy preserving method with typical FP-tree frequent pattern mining approach and WINEPI sequence pattern mining algorithm, an alert correlation model is set up to well balance the alert correlation and the privacy protection. Experimental results show that this model reaches close similarity of correlation and analysis result comparing with original FP-tree and WINEPI algorithm, while sensitive attributes are well preserved.
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