一个自定义在线社交网络用户隐私设置的框架

Agrima Srivastava, G. Geethakumari
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引用次数: 14

摘要

隐私是在线社交网络中最重要的问题之一。在线社交网络数据是大数据,因为数百万用户是其中的一部分。在线社交网络中每个用户的个人信息都是一种资产,可以被第三方交易以获取利益。个人应该意识到有多少个人信息可以在没有风险的情况下被分享。不同的人对分享个人资料有不同的要求,因此测量如此庞大和多样化的人口的隐私本身就是一项具有挑战性和复杂的任务。在这篇论文中,我们提出了一个框架,通过允许人们根据自己选择的特定人群来衡量他们的隐私,而不是用在线社交网络上的整个人群来衡量,从而确保个人的隐私。我们提出了一种选择最佳模型来拟合真实世界数据的方法,并计算了各种剖面项目的灵敏度。该框架为用户提供了特定的标签,以表明他们的个人资料隐私强度,并使他们能够自定义他们的隐私设置,以提高隐私商。用户还可以充当隐私商较低的网络好友的顾问,从而在社交网络中传播隐私意识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework to customize privacy settings of online social network users
Privacy is one of the most important concerns in an online social network. Online social network data is big data as millions of users are a part of it. The personal information of every user in an online social network is an asset that may be traded by a third party for its benefits. Individuals should be aware of how much of their personal information could be shared without risk. Different people have different requirements to share a profile item hence measuring privacy of such huge and diverse population is a challenging and complicated task in itself. In this paper we have proposed a framework that ensures privacy of individuals by allowing them to measure their privacy with respect to some specific people of their choice rather than measuring it with the entire population on online social networks. We have suggested a method to choose the best model to fit the real world data and to calculate the sensitivities of various profile items. The framework gives specific labels to users that indicates their profile privacy strength and enable them to customize their privacy settings so as to improve the privacy quotient. The users can also act as advisers to their online friends whose privacy quotients are low and thus spread privacy awareness in social networks.
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