Mobile Edge Caching (MEC) is a revolutionary technology for the Sixth Generation (6G) of wireless networks with the promise to significantly reduce users' latency via offering storage capacities at the edge of the network. The efficiency of the MEC network, however, critically depends on its ability to dynamically predict/update the storage of caching nodes with the top-K popular contents. Conventional statistical caching schemes are not robust to the time-variant nature of the underlying pattern of content requests, resulting in a surge of interest in using Deep Neural Networks (DNNs) for time-series popularity prediction in MEC networks. However, existing DNN models within the context of MEC fail to simultaneously capture both temporal correlations of historical request patterns and the dependencies between multiple contents. This necessitates an urgent quest to develop and design a new and innovative popularity prediction architecture to tackle this critical challenge. The paper addresses this gap by proposing a novel hybrid caching framework based on the attention mechanism. Referred to as the parallel Vision Transformers with Cross Attention (ViT-CAT) Fusion, the proposed architecture consists of two parallel ViT networks, one for collecting temporal correlation, and the other for capturing dependencies between different contents. Followed by a Cross Attention (CA) module as the Fusion Center (FC), the proposed ViT-CAT is capable of learning the mutual information between temporal and spatial correlations, as well, resulting in improving the classification accuracy, and decreasing the model's complexity about 8 times. Based on the simulation results, the proposed ViT-CAT architecture outperforms its counterparts across the classification accuracy, complexity, and cache-hit ratio.
翻译:无线网络第六代(6G)的复杂度(MEC)是一个革命性技术,它有望通过在网络边缘提供存储能力,大幅降低用户的延迟度。然而,MEC网络的效率关键取决于其动态预测/更新与上K流行内容的缓冲节点储存能力。常规统计缓冲计划对于内容请求基本模式的时间变化性质来说并不强大,导致对使用深神经网络(DNN)在MEC网络的时间序列普及率预测的兴趣激增。然而,MEC网络中现有的DNN模型未能同时捕捉历史请求模式的时间相关性和多个内容之间的依赖性。这需要紧急寻求开发并设计一个新的创新的受欢迎性预测架构以应对这一关键挑战。 常规统计缓冲计划不适应内容请求基本模式的复杂度框架(DNNN), 导致使用CEVIL(VT-CAT)分类的平行愿景变异异性关系, 拟议的VIT(VIT) 精确度结构由两个平行的网络组成, 以不断递增的CEFC 模型为基础, 跟踪, 并依托 不同时间 的CFCA 的系统 。