NPS-AntiClone:基于非隐私敏感用户配置文件数据的身份克隆检测

Ahmed Alharbi, Hai Dong, X. Yi, Prabath Abeysekara
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引用次数: 1

摘要

社会感知是一种范式,它允许从人类和设备中收集数据。这些感知到的数据(例如社交网络帖子)可以托管在社交传感器云(即社交网络)中,并作为社交传感器云服务(SocSen服务)交付。这些服务可以通过其提供者的社交网络账户来识别。攻击者通过克隆SocSen服务提供商的用户配置文件入侵社交传感器云,欺骗社交传感器云用户。为了防止这种身份欺骗带来的不良后果,我们提出了一种新的无监督SocSen服务提供商身份克隆检测方法NPS-AntiClone。此方法利用从社交网络收集的非隐私敏感用户配置文件数据来执行克隆身份检测。它由三个主要部分组成:1)多视图帐户表示模型,2)嵌入学习模型和3)预测模型。多视图帐户表示模型为给定的身份形成三种不同的视图,即帖子视图、网络视图和配置文件属性视图。嵌入学习模型使用加权广义典型相关分析从生成的多视图表示中学习单个嵌入。最后,NPS-AntiClone计算两个账户嵌入之间的余弦相似度,以预测这两个账户是否包含克隆账户及其受害者。我们使用真实世界的数据集评估了我们提出的方法。结果表明,NPS-AntiClone显著优于现有的最先进的身份克隆检测技术和机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NPS-AntiClone: Identity Cloning Detection based on Non-Privacy-Sensitive User Profile Data
Social sensing is a paradigm that allows crowd-sourcing data from humans and devices. This sensed data (e.g. social network posts) can be hosted in social-sensor clouds (i.e. social networks) and delivered as social-sensor cloud services (SocSen services). These services can be identified by their providers' social network accounts. Attackers intrude social-sensor clouds by cloning SocSen service providers' user profiles to deceive social-sensor cloud users. We propose a novel unsupervised SocSen service provider identity cloning detection approach, NPS-AntiClone, to prevent the detrimental outcomes caused by such identity deception. This approach leverages non-privacy-sensitive user profile data gathered from social networks to perform cloned identity detection. It consists of three main components: 1) a multi-view account representation model, 2) an embedding learning model and 3) a prediction model. The multi-view account representation model forms three different views for a given identity, namely a post view, a network view and a profile attribute view. The embedding learning model learns a single embedding from the generated multi-view representation using Weighted Generalized Canonical Correlation Analysis. Finally, NPS-AntiClone calculates the cosine similarity between two accounts' embedding to predict whether these two accounts contain a cloned account and its victim. We evaluated our proposed approach using a real-world dataset. The results showed that NPS-AntiClone significantly outperforms the existing state-of-the-art identity cloning detection techniques and machine learning approaches.
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