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A Survey on Applications of Model-Free Strategy Learning in Cognitive Wireless Networks

机译:无模型策略学习在认知无线网络中的应用研究

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The framework of cognitive wireless networks is expected to endow the wireless devices with the cognition-intelligence ability with which they can efficiently learn and respond to the dynamic wireless environment. In many practical scenarios, the complexity of network dynamics makes it difficult to determine the network evolution model in advance. Thus, the wireless decision-making entities may face a black-box network control problem and the model-based network management mechanisms will be no longer applicable. In contrast, model-free learning enables the decision-making entities to adapt their behaviors based on the reinforcement from their interaction with the environment and (implicitly) build their understanding of the system from scratch through trial-and-error. Such characteristics are highly in accordance with the requirement of cognition-based intelligence for devices in cognitive wireless networks. Therefore, model-free learning has been considered as one key implementation approach to adaptive, self-organized network control in cognitive wireless networks. In this paper, we provide a comprehensive survey on the applications of the state-of-the-art model-free learning mechanisms in cognitive wireless networks. According to the system models on which those applications are based, a systematic overview of the learning algorithms in the domains of single-agent system, multiagent systems, and multiplayer games is provided. The applications of model-free learning to various problems in cognitive wireless networks are discussed with the focus on how the learning mechanisms help to provide the solutions to these problems and improve the network performance over the model-based, non-adaptive methods. Finally, a broad spectrum of challenges and open issues is discussed to offer a guideline for the future research directions.
机译:认知无线网络的框架有望使无线设备具有认知智能能力,从而可以有效地学习和响应动态无线环境。在许多实际情况下,网络动力学的复杂性使得很难预先确定网络演化模型。因此,无线决策实体可能会面临黑盒网络控制问题,基于模型的网络管理机制将不再适用。相比之下,无模型学习使决策实体能够基于与环境互动的增强来适应其行为,并且(隐式地)从头开始通过反复试验来建立对系统的理解。这样的特性高度符合认知无线网络中设备的基于认知的智能的要求。因此,无模型学习已被认为是认知无线网络中自适应,自组织网络控制的一种关键实现方法。在本文中,我们对认知无线网络中最新的无模型学习机制的应用进行了全面的调查。根据这些应用程序所基于的系统模型,系统地概述了单代理系统,多代理系统和多玩家游戏领域中的学习算法。讨论了无模型学习对认知无线网络中各种问题的应用,重点是学习机制如何通过基于模型的非自适应方法帮助提供这些问题的解决方案并提高网络性能。最后,讨论了各种各样的挑战和未解决的问题,为将来的研究方向提供了指南。

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