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Agent transfer learning for cognitive resource management on multi-hop backhaul networks

机译:基于代理转移学习的多跳回程网络上的认知资源管理

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In this paper we have introduced a transfer learning paradigm for radio resource management applied to a multi-hop backhaul network, which enables the agents (base stations) to share learning knowledge to improve a traditional reinforcement learning algorithm and the system Quality of Service (QoS). We break down transfer learning into three issues with algorithms developed for each: a source agent selection scheme that groups the neighbour links to exchange learning information; a target agent training scheme that enhances the learner's knowledge base by training functions; an information exchange control scheme that controls the cooperation overhead. It is validated that by transferring the weight table conversely from neighbour source agents, the target agents can make more accurate resource allocation decision, with up to 50% reduction in retransmissions. Moreover, the transfer process can be terminated once the target agent has mature knowledge from source agents, which reduces up to 95% of control information overhead with efficient QoS achieved.
机译:在本文中,我们介绍了一种应用于多跳回程网络的无线资源管理转移学习范例,它使代理(基站)可以共享学习知识,从而改善传统的强化学习算法和系统服务质量(QoS) )。我们将转移学习分为三个问题,针对每个问题开发了算法:源代理选择方案将邻居链接分组以交换学习信息;目标代理培训计划,通过培训功能增强学习者的知识库;控制合作开销的信息交换控制方案。可以验证的是,通过从邻居源代理反向传输权重表,目标代理可以做出更准确的资源分配决策,最多可减少50%的重传。而且,一旦目标代理从源代理那里获得了成熟的知识,就可以终止传输过程,这可以减少多达95%的控制信息开销,并获得有效的QoS。

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