Location-sharing services have become increasingly popular with the proliferation of smartphones and online social networks. People share their locations with each other to record their daily lives or satisfy their social needs. At the same time, inappropriate disclosure of location information poses threats to people's privacy.ududOne of the reasons why people fail to protect their location privacy is the difficulty of using the current mechanisms to manually configure location-privacy settings. Since people's location-privacy preferences are context-aware, manual configuration is cumbersome. People's incapability and unwillingness to do so lead to unexpected location disclosures that violate their location privacy.ududIn this thesis, we investigate the feasibility of using recommender systems to help people protect their location privacy. We examine the performance of location-privacy recommender systems and compare it with the state-of-the-art. We also conduct online user studies to understand people's acceptance of such recommender systems and their concerns. We revise our design of the systems according to the results of the user studies.ududWe find that user-based collaborative filtering can accurately recommend location-privacy preferences and outperform the state-of-the-art when training data are insufficient. From users' perspective, their acceptance of location-privacy recommender systems is affected by the openness and the context of recommendations and their privacy concerns about the systems. It is feasible to use data obfuscation or decentralisation to alleviate people's concerns and meanwhile keep the systems robust against malicious data attacks.
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机译:随着智能手机和在线社交网络的普及,位置共享服务变得越来越受欢迎。人们彼此共享位置,以记录他们的日常生活或满足他们的社会需求。同时,不适当的位置信息披露会对人们的隐私构成威胁。 ud ud人们未能保护自己的位置隐私的原因之一是难以使用当前的机制手动配置位置隐私设置。由于人们的位置隐私首选项是上下文感知的,因此手动配置很麻烦。人们的能力不足和不愿意这样做会导致意外的位置披露,从而侵犯他们的位置隐私。 ud ud在本文中,我们研究了使用推荐系统帮助人们保护其位置隐私的可行性。我们检查了位置隐私推荐系统的性能,并将其与最新技术进行了比较。我们还进行在线用户研究,以了解人们对这种推荐系统的接受程度以及他们的担忧。我们根据用户研究的结果修订了系统的设计。 ud ud我们发现,当训练数据不足时,基于用户的协作过滤可以准确地推荐位置-隐私首选项,并且胜过最新技术。从用户的角度来看,他们对位置-隐私推荐系统的接受受到建议的开放性和上下文以及对系统的隐私关注的影响。使用数据混淆或分散来减轻人们的担忧,同时保持系统的强大功能来抵御恶意数据攻击是可行的。
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