Learning from Online Regrets: From Deleted Posts to Risk Awareness in Social Network Sites

N. E. D. Ferreyra, Rene Meis, M. Heisel
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引用次数: 10

Abstract

Social Network Sites (SNSs) like Facebook or Instagram are spaces where people expose their lives to wide and diverse audiences. This practice can lead to unwanted incidents such as reputation damage, job loss or harassment when pieces of private information reach unintended recipients. As a consequence, users often regret to have posted private information in these platforms and proceed to delete such content after having a negative experience. Risk awareness is a strategy that can be used to persuade users towards safer privacy decisions. However, many risk awareness technologies for SNSs assume that information about risks is retrieved and measured by an expert in the field. Consequently, risk estimation is an activity that is often passed over despite its importance. In this work we introduce an approach that employs deleted posts as risk information vehicles to measure the frequency and consequence level of self-disclosure patterns in SNSs. In this method, consequence is reported by the users through an ordinal scale and used later on to compute a risk criticality index. We thereupon show how this index can serve in the design of adaptive privacy nudges for SNSs.
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从网络遗憾中学习:从删除的帖子到社交网站的风险意识
像Facebook或Instagram这样的社交网站是人们向广泛而多样化的受众展示自己生活的空间。这种做法可能会导致意想不到的事件,如声誉受损、失业或骚扰,当私人信息的碎片到达意想不到的收件人。因此,用户往往会后悔在这些平台上发布了私人信息,并在经历了负面体验后继续删除这些内容。风险意识是一种策略,可以用来说服用户做出更安全的隐私决定。然而,许多社交网站的风险意识技术都假定有关风险的信息是由该领域的专家检索和测量的。因此,尽管风险评估很重要,但它是一个经常被忽略的活动。在这项工作中,我们引入了一种方法,使用删除的帖子作为风险信息工具来衡量社交网站中自我披露模式的频率和后果水平。在这种方法中,后果由用户通过序数量表报告,然后用于计算风险临界指数。因此,我们将展示该索引如何在社交网站的自适应隐私推动设计中发挥作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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