A large amount of information has been published to online social networks every day. Individual privacy-related information is also possibly disclosed unconsciously by the end-users. Identifying privacy-related data and protecting the online social network users from privacy leakage turn out to be significant. Under such a motivation, this study aims to propose and develop a hybrid privacy classification approach to detect and classify privacy information from OSNs. The proposed hybrid approach employs both deep learning models and ontology-based models for privacy-related information extraction. Extensive experiments are conducted to validate the proposed hybrid approach, and the empirical results demonstrate its superiority in assisting online social network users against privacy leakage.
翻译:每天在网上社交网络上公布大量信息,最终用户也可能无意识地披露个人隐私相关信息。识别隐私相关数据并保护在线社交网络用户免遭隐私泄漏非常重要。基于这一动机,本研究旨在提出和制定一种混合隐私分类方法,以检测和分类来自OSNs的隐私信息。拟议混合方法采用深层学习模式和基于本体的隐私信息提取模式。进行了广泛的实验,以验证拟议的混合方法,实验结果显示,该方法在协助在线社交网络用户防止隐私泄漏方面具有优势。