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ISBP: Understanding the Security Rule of Users Information-Sharing Behaviors in Partnership

机译:ISBP:了解合作伙伴中用户信息共享行为的安全规则

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摘要

The rapid growth of social network data has given rise to high security awareness among users, especially when they exchange and share their personal information. However, because users have different feelings about sharing their information, they are often puzzled about who their partners for exchanging information can be and what information they can share. Is it possible to assist users in forming a partnership network in which they can exchange and share information with little worry? We propose a modified information sharing behavior prediction (ISBP) model that can help in understanding the underlying rules by which users share their information with partners in light of three common aspects: what types of items users are likely to share, what characteristics of users make them likely to share information, and what features of users’ sharing behavior are easy to predict. This model is applied with machine learning techniques in WEKA to predict users’ decisions pertaining to information sharing behavior and form them into trustable partnership networks by learning their features. In the experiment section, by using two real-life datasets consisting of citizens’ sharing behavior, we identify the effect of highly sensitive requests on sharing behavior adjacent to individual variables: the younger participants’ partners are more difficult to predict than those of the older participants, whereas the partners of people who are not computer majors are easier to predict than those of people who are computer majors. Based on these findings, we believe that it is necessary and feasible to offer users personalized suggestions on information sharing decisions, and this is pioneering work that could benefit college researchers focusing on user-centric strategies and website owners who want to collect more user information without raising their privacy awareness or losing their trustworthiness.
机译:社交网络数据的快速增长引起了用户之间的高度安全意识,尤其是当用户交换和共享其个人信息时。但是,由于用户对共享他们的信息有不同的感觉,因此他们常常对他们的伙伴可以交换信息以及共享什么信息感到困惑。是否可以协助用户建立伙伴关系网络,使他们可以毫不担心地交换和共享信息?我们提出了一种改进的信息共享行为预测(ISBP)模型,该模型可以根据三个常见方面帮助理解用户与合作伙伴共享信息的基本规则:用户可能共享什么类型的物品,用户做出什么特征他们可能会共享信息,并且用户共享行为的哪些特征很容易预测。该模型与WEKA中的机器学习技术一起使用,以预测用户有关信息共享行为的决策,并通过学习用户的功能将其形成可信任的合作伙伴网络。在实验部分中,通过使用两个包含公民共享行为的现实生活数据集,我们确定了高度敏感的请求对个体变量附近的共享行为的影响:年轻参与者的伴侣比老年人参与者更难以预测而不是计算机专业的人的伙伴比计算机专业的人的伙伴更容易预测。基于这些发现,我们认为向用户提供有关信息共享决策的个性化建议是必要且可行的,这是一项开创性的工作,可以使专注于以用户为中心的策略的大学研究人员和希望在不收集信息的情况下收集更多用户信息的网站所有者受益提高他们的隐私意识或失去他们的信任度。

著录项

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  • 作者

    Hongchen Wu; Xinjun Wang;

  • 作者单位
  • 年(卷),期 -1(11),3
  • 年度 -1
  • 页码 e0151002
  • 总页数 21
  • 原文格式 PDF
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