In recent years, deep learning has been widely applied in communications and achieved remarkable performance improvement. Most of the existing works are based on data-driven deep learning, which requires a significant amount of training data for the communication model to adapt to new environments and results in huge computing resources for collecting data and retraining the model. In this paper, we will significantly reduce the required amount of training data for new environments by leveraging the learning experience from the known environments. Therefore, we introduce few-shot learning to enable the communication model to generalize to new environments, which is realized by an attention-based method. With the attention network embedded into the deep learning-based communication model, environments with different power delay profiles can be learnt together in the training process, which is called the learning experience. By exploiting the learning experience, the communication model only requires few pilot blocks to perform well in the new environment. Through an example of deep-learning-based channel estimation, we demonstrate that this novel design method achieves better performance than the existing data-driven approach designed for few-shot learning.
翻译:近年来,深层次学习被广泛应用于通信,并取得了显著的绩效改进; 大部分现有工作以数据驱动的深层次学习为基础,这要求为通信模式提供大量培训数据,以适应新的环境和产生巨大的计算资源,用于收集数据和再培训模型; 在本文件中,我们将通过利用已知环境中的学习经验,大大减少新环境所需的培训数据数量; 因此, 我们引入了微小的学习方法, 使通信模式能够向新的环境概括化, 这是一种基于关注的方法。 随着关注网络嵌入深层次基于学习的通信模式, 不同电力延迟情况的环境可以在培训过程中一起学习, 即学习经验。 通过利用学习经验, 通信模式只需要几个试点区块才能在新环境中很好地运行。 我们通过一个基于深层次学习的频道估计实例, 证明这种新设计方法比为少片学习设计的现有数据驱动方法取得更好的业绩。