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A learning model for trustworthiness of context-awareness services

机译:上下文感知服务可信度的学习模型

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摘要

When ubiquitous computing devices access a context-awareness service, such as a location service, they need some assurance that the quality of the information received is trustworthy. However, the trustworthiness of a service cannot be determined by the service itself but must be decided externally to the service. Furthermore, the trustworthiness of a service provider may be dynamic, depending on current environmental conditions. We propose a learning model that uses binary positiveegative feedback from service consumers and cross-validation with other service providers to adjust the dynamic trustworthiness of a service provider.
机译:当普遍存在的计算设备访问诸如位置服务的上下文意识服务时,他们需要一些保证,所接收的信息的质量是值得信赖的。但是,服务的可信度不能通过服务本身确定,但必须在外部决定。此外,根据当前的环境条件,服务提供商的可信度可能是动态的。我们提出了一个学习模型,它使用来自服务消费者的二进制正/负反馈以及与其他服务提供商的交叉验证来调整服务提供商的动态可信度。

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