【24h】

Social Network Privacy: Issues and Measurement

机译:社交网络隐私:问题和测量

获取原文

摘要

Social networks are becoming pervasive in todays world. Millions of people worldwide are involved in different form of online networking, with Facebook being one of the most popular sites. Online networks allow individuals to connect with friends and family, and share their private information. One of the reasons for the popularity of virtual communities is the perception of benefits received from the community. However, problems with privacy and security of the users information may also occur, especially when members are not aware of the risks of posting sensitive information on a social network. Members of social networking sites could become victims of identity theft, physical or online stalking and embarrassment as a consequence of malicious manipulation of their profiles data. Although networking sites often provide features for privacy settings, a high percentage of users neither know nor change their privacy preferences. This situation brings to consideration about many important aspects of social network privacy, such as what are the privacy issues in social networks? what are common privacy threats or risks in social networks? how privacy can be measured in a meaningful way? and how to empower users with knowledge to make correct decisions when selecting privacy settings? The goal of this paper is twofold. First, we discuss potential risks and attacks of social network site users privacy. Second, we present the measurement and quantification of the social privacy, along with solutions for privacy protection.
机译:社交网络在今天的世界中正变得普遍存在。全球数百万人参与不同形式的在线网络,Facebook是最受欢迎的网站之一。在线网络允许个人与朋友和家人联系,并分享他们的私人信息。虚拟社区普及的原因之一是对社区所获得的福利的看法。然而,也可能发生具有隐私和安全性的问题,特别是当成员不了解社交网络上发布敏感信息的风险时,尤其可能。由于恶意操纵其简档数据,社交网站的成员可能成为身份盗窃,身体或网上跟踪和尴尬的受害者。虽然网络网站经常为隐私设置提供功能,但既不知道用户高百分比也不会改变他们的隐私首选项。这种情况带来了关于社会网络隐私的许多重要方面的考虑,例如社交网络中的隐私问题是什么?社交网络中的常见隐私威胁或风险是什么?隐私如何以有意义的方式衡量?以及如何在选择隐私设置时赋予用户在选择正确的决策时进行正确的决策?本文的目标是双重。首先,我们讨论社交网站用户隐私的潜在风险和攻击。其次,我们介绍了社会隐私的测量和量化,以及隐私保护的解决方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号