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A privacy self-assessment framework for online social networks
Affiliation:1. Department of Business Administration, Hansung University, Seoul, South Korea;2. Department of Business Administration, Seoul National University, Seoul, South Korea;3. Department of Business Administration, Sangji Youngseo College, 660 Usan-dong, Wonju-si, Gangwon-do 26339, South Korea\n;1. The MOE Key Laboratory of Intelligent Computing & Information Processing, Xiangtan University, Xiangtan 411105, China;2. College of Information Engineering, Xiangtan University, Xiangtan 411105, China;1. Department of Industrial Engineering, Istanbul Commerce University, Küçükyal? E5 Kav?a?? ?nönü Cad. No: 4, Küçükyal? 34840, Istanbul, Turkey;2. Istanbul Medeniyet University Faculty of Engineering and Natural Sciences, Department of Industrial Engineering 34700 Üsküdar, Istanbul, Turkey
Abstract:During our digital social life, we share terabytes of information that can potentially reveal private facts and personality traits to unexpected strangers. Despite the research efforts aiming at providing efficient solutions for the anonymization of huge databases (including networked data), in online social networks the most powerful privacy protection “weapons” are the users themselves. However, most users are not aware of the risks derived by the indiscriminate disclosure of their personal data. Moreover, even when social networking platforms allow their participants to control the privacy level of every published item, adopting a correct privacy policy is often an annoying and frustrating task and many users prefer to adopt simple but extreme strategies such as “visible-to-all” (exposing themselves to the highest risk), or “hidden-to-all” (wasting the positive social and economic potential of social networking websites). In this paper we propose a theoretical framework to i) measure the privacy risk of the users and alert them whenever their privacy is compromised and ii) help the users customize semi-automatically their privacy settings by limiting the number of manual operations. By investigating the relationship between the privacy measure and privacy preferences of real Facebook users, we show the effectiveness of our framework.
Keywords:
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