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首页> 外文期刊>Vehicular Technology, IEEE Transactions on >Feedback-Driven Interactive Learning in Dynamic Wireless Resource Management for Delay-Sensitive Users
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Feedback-Driven Interactive Learning in Dynamic Wireless Resource Management for Delay-Sensitive Users

机译:延迟敏感用户的动态无线资源管理中的反馈驱动交互式学习

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In this paper, we study the problem of dynamic resource management for delay-sensitive users over wireless networks. We focus on a decentralized setting, where autonomous users make self-interested decisions to maximize their utility functions as evaluated based on information feedback. In this paper, two types of information feedback are discussed. One is the private information feedback between a transmitter-receiver pair. The other is the public information feedback among users (i.e., different transmitter-receiver pairs). Due to the informationally decentralized nature of the wireless network, a user cannot have complete information about the transmission actions of its interfering neighbors. However, the user can implicitly or explicitly model the transmission strategies of its major interference sources based on the information feedback. In this paper, we provide an interactive learning framework for distributed power control of delay-sensitive users over multicarrier wireless networks. Specifically, the user can adopt corresponding interactive learning schemes to explicitly model the other users' strategies if public information feedback is available or to implicitly model the impact of other users' actions on its utility if only private information is available. Based on these models, the user creates beliefs and is able to strategically adapt its decisions to maximize its utility. We determine the performance upper bounds for the user's utility when learning from private or public information feedback and investigate the cost-performance tradeoffs resulting from the information feedback gathered with different frequencies and from various users. The simulation results show that the proposed adaptive interactive learning approach significantly improves the energy efficiency of delay-sensitive users compared with schemes that perform myopic best response.
机译:在本文中,我们研究了无线网络中对延迟敏感的用户的动态资源管理问题。我们专注于分散的环境,在这种环境下,自主用户可以根据自己的利益做出自己的决定,以根据信息反馈评估自己的效用功能。本文讨论了两种类型的信息反馈。一种是在收发器对之间的私有信息反馈。另一个是用户(即,不同的收发器对)之间的公共信息反馈。由于无线网络的信息分散性,用户无法获得有关其干扰邻居的传输动作的完整信息。但是,用户可以基于信息反馈隐式或显式地建模其主要干扰源的传输策略。在本文中,我们提供了一个交互式学习框架,用于通过多载波无线网络对延迟敏感的用户进行分布式功率控制。具体而言,如果可以使用公共信息反馈,则用户可以采用相应的交互式学习方案来显式地建模其他用户的策略,或者如果仅私有信息可用,则可以隐式地建模其他用户的行为对其效用的影响。基于这些模型,用户可以建立信念,并能够从战略上调整其决策以最大程度地发挥其效用。当从私人或公共信息反馈中学习时,我们确定用户实用程序的性能上限,并调查以不同频率和不同用户收集的信息反馈导致的成本-性能折衷。仿真结果表明,与执行近视最佳响应的方案相比,所提出的自适应交互式学习方法显着提高了时延敏感用户的能效。

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