基于交叉注意的时空预测学习在通信和网络中的应用

Ke He;Thang Xuan Vu;Lisheng Fan;Symeon Chatzinotas;Björn Ottersten
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摘要

本文研究了在MIMO信道预测、移动流量分析和网络切片等多种应用中至关重要的时空预测学习问题。为了解决这个问题,许多现有模型采用了注意机制来预测未来的输出。然而,这些模型中的大多数使用单域关注,只在时间域中捕获输入依赖结构。这种限制降低了他们在时空预测学习中的预测准确性,在时空预测学习中,理解空间和时间依赖性是必不可少的。为了解决这一问题并提高预测性能,本文提出了一种新的交叉注意机制。交叉注意可以理解为一个可学习的回归核,它对具有空间和时间相似性的输入序列进行优先级排序,并提取相关信息以生成未来时隙的输出。仿真结果和基于合成和真实数据集的烧蚀研究表明,与传统的注意层相比,所提出的交叉注意层的预测精度有较大提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Predictive Learning Using Crossover Attention for Communications and Networking Applications
This paper investigates the spatio-temporal predictive learning problem, which is crucial in diverse applications such as MIMO channel prediction, mobile traffic analysis, and network slicing. To address this problem, the attention mechanism has been adopted by many existing models to predict future outputs. However, most of these models use a single-domain attention which captures input dependency structures only in the temporal domain. This limitation reduces their prediction accuracy in spatio-temporal predictive learning, where understanding both spatial and temporal dependencies is essential. To tackle this issue and enhance the prediction performance, we propose a novel crossover attention mechanism in this paper. The crossover attention can be understood as a learnable regression kernel which prioritizes the input sequence with both spatial and temporal similarities and extracts relevant information for generating the output of future time slots. Simulation results and ablation studies based on synthetic and realistic datasets show that the proposed crossover attention achieves considerable prediction accuracy improvement compared to the conventional attention layers.
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