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An asymmetrical nash bargaining for adaptive and automated context negotiation in pervasive environments

机译:在普适环境中进行自适应和自动上下文协商的非对称nash讨价还价

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To cope with the energy performance concern of pervasive and Internet-of-Thing (IoT) devices, current pervasive systems require intelligent algorithms that can change the behavior of the devices and the overall network. Making the devices aware of their states and able to adjust their operative modes using context information has the potential to achieve better energy performance. Context information is typically obtained from environmental sensors, device sensors, and from external sources. In this work, we study the marketing of context-aware services through an adaptive context negotiation model. The negotiation process between context consumers and one or several context providers aims to satisfy the preferences of each the negotiating party concerning the quality-of-context (QoC) levels required by the context consumer. The proposed negotiation model uses an asymmetrical "Power Bargaining" model in which each negotiating party can influence the other party. It implements a learning algorithm for a symmetrical bargaining model. Numerical evaluation of the model shows the convergence of the Nash Bargaining Solution (NBS) by using a learning algorithm.
机译:为了应对普及型和物联网(IoT)设备的能源性能问题,当前的普及型系统需要智能算法,可以更改设备和整个网络的行为。使设备知道其状态并能够使用上下文信息来调整其工作模式,有可能获得更好的能源性能。背景信息通常是从环境传感器,设备传感器以及外部来源获得的。在这项工作中,我们通过自适应上下文协商模型研究上下文感知服务的营销。上下文消费者与一个或多个上下文提供者之间的协商过程旨在满足每个协商方关于上下文消费者所需的上下文质量(QoC)级别的偏好。提议的谈判模型使用非对称的“权力讨价还价”模型,其中每个谈判方都可以影响另一方。它为对称的讨价还价模型实现了一种学习算法。该模型的数值评估表明,通过使用学习算法,纳什讨价还价解决方案(NBS)的收敛性。

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