Privacy-preserving assessment of social network data trustworthiness

Chenyun Dai, Fang-Yu Rao, T. Truta, E. Bertino
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引用次数: 6

Abstract

Extracting useful knowledge from social network datasets is a challenging problem. To add to the difficulty of this problem, privacy concerns that exist for many social network datasets have restricted the ability to analyze these networks and consequently to maximize the knowledge that can be extracted from them. This paper addresses this issue by introducing the problem of data trustworthiness in social networks when repositories of anonymized social networks exist that can be used to assess such trustworthiness. Three trust score computation models (absolute, relative, and weighted) that can be instantiated for specific anonymization models are defined and algorithms to calculate these trust scores are developed. Using both real and synthetic social networks, the usefulness of the trust score computation is validated through a series of experiments.
社交网络数据可信度的隐私保护评估
从社交网络数据集中提取有用的知识是一个具有挑战性的问题。为了增加这个问题的难度,许多社交网络数据集存在的隐私问题限制了分析这些网络的能力,从而限制了可以从中提取的知识的最大化。本文通过引入社交网络中的数据可信度问题来解决这个问题,当匿名社交网络的存储库存在时,可以用来评估这种可信度。定义了可以实例化特定匿名化模型的三种信任分数计算模型(绝对、相对和加权),并开发了计算这些信任分数的算法。在真实社交网络和合成社交网络中,通过一系列实验验证了信任得分计算的有效性。
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