We propose a new approach for power control in wireless networks using self-supervised learning. We partition a multi-layer perceptron that takes as input the channel matrix and outputs the power control decisions into a backbone and a head, and we show how we can use contrastive learning to pre-train the backbone so that it produces similar embeddings at its output for similar channel matrices and vice versa, where similarity is defined in an information-theoretic sense by identifying the interference links that can be optimally treated as noise. The backbone and the head are then fine-tuned using a limited number of labeled samples. Simulation results show the effectiveness of the proposed approach, demonstrating significant gains over pure supervised learning methods in both sum-throughput and sample efficiency.
翻译:我们提议了一种使用自我监督学习的无线网络电源控制新方法。 我们将多层次的光谱用于将频道矩阵和输出的电源控制决定输入骨干和头部,我们展示了如何利用对比性学习来预先培训骨干,以便它在其输出中为类似的频道矩阵和反之亦然,在信息理论意义上确定了相似性,确定了可以被最优化地作为噪音处理的干扰连接。然后,用数量有限的标签样本对骨干和头进行微调。模拟结果显示了拟议方法的有效性,表明在纯监管的学习方法上,在总和传输和样本效率方面都取得了显著的进展。