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A Context-Aware Privacy Policy Language for Controlling Access to Context Information of Mobile Users

机译:一种用于控制对移动用户上下文信息的访问的上下文感知隐私策略语言

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摘要

This paper introduces a Context-aware Privacy Policy Language (CPPL) that enables mobile users to control who can access their context information, at what detail, and in which situation by specifying their context-aware privacy rules. Context-aware privacy rules map a set of privacy rules to one or more user's situations, in which these rules are valid. Each time a user's situation changes, a list of valid rules is updated, leaving only a subset of the specified rules to be evaluated by a privacy framework upon arrival of a context query. In the existing context-dependent privacy policy languages a user's context is used as an additional condition parameter in a privacy rule, thus all the specified privacy rules have to be evaluated when a request to access a user's context arrives. Keeping the number of rules that need to be evaluated small is important because evaluation of a large number of privacy rules can potentially increase the response time to a context query. CPPL also enables rules to be defined based on a user's social relationship with a context requestor, which reduces the number of rules that need to be defined by a user and that consequently need to be evaluated by a privacy mechanism. This paper shows that when compared to the existing context-dependent privacy policy languages, this number of rules (that are encoded using CPPL) decreases with an increasing number of user-defined situations and requestors that are represented by a small number of social relationship groups.
机译:本文介绍了一种上下文感知的隐私策略语言(CPPL),该语言使移动用户可以通过指定他们的上下文感知的隐私规则来控制谁可以访问他们的上下文信息,以何种详细信息以及在哪种情况下。上下文感知的隐私规则将一组隐私规则映射到一个或多个用户的情况,在这些情况下这些规则是有效的。每次用户的情况发生变化时,将更新有效规则列表,仅保留指定规则的子集,以便在上下文查询到达时由隐私框架进行评估。在现有的依赖于上下文的隐私策略语言中,用户上下文用作隐私规则中的附加条件参数,因此,当访问用户上下文的请求到达时,必须评估所有指定的隐私规则。使需要评估的规则数量保持较小很重要,因为评估大量隐私规则可能会增加对上下文查询的响应时间。 CPPL还允许基于用户与上下文请求者的社交关系来定义规则,这减少了用户需要定义的规则数量,因此需要由隐私机制评估。本文表明,与现有的依赖于上下文的隐私策略语言相比,(使用CPPL编码的)规则数量随着用户定义的情况和以少量社交关系组表示的请求者数量的增加而减少。

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