The surging demand for high-definition video streaming services and large neural network models (e.g., Generative Pre-trained Transformer, GPT) implies a tremendous explosion of Internet traffic. To mitigate the traffic pressure, architectures with in-network storage have been proposed to cache popular contents at devices in closer proximity to users. Correspondingly, in order to maximize caching utilization, it becomes essential to devise an effective popularity prediction method. In that regard, predicting popularity with dynamic graph neural network (DGNN) models achieve remarkable performance. However, DGNN models still suffer from tackling sparse datasets where most users are inactive. Therefore, we propose a reformative temporal graph network, named semantics-enhanced temporal graph network (STGN), which attaches extra semantic information into the user-content bipartite graph and could better leverage implicit relationships behind the superficial topology structure. On top of that, we customize its temporal and structural learning modules to further boost the prediction performance. Specifically, in order to efficiently aggregate the diversified semantics that a content might possess, we design a user-specific attention (UsAttn) mechanism for temporal learning module. Unlike the attention mechanism that only analyzes the influence of genres on content, UsAttn also considers the attraction of semantic information to a specific user. Meanwhile, as for the structural learning, we introduce the concept of positional encoding into our attention-based graph learning and adopt a semantic positional encoding (SPE) function to facilitate the analysis of content-oriented user-association analysis. Finally, extensive simulations verify the superiority of our STGN models and demonstrate the effectiveness in content caching.
翻译:对高清晰视频流流服务和大型神经网络模型(例如,Genement Pregreed Terverer,GPT)的需求猛增,这意味着互联网流量的急剧激增。为了缓解交通压力,提议在网络内储存结构,在用户更近的地方将流行内容隐藏在设备中。相应地,为了最大限度地增加缓冲利用率,必须设计有效的普及预测方法。在这方面,通过动态图形神经网络(DGNN)模型预测受欢迎程度,从而实现显著的绩效。然而,DGNN模型仍然在解决大多数用户不活跃的稀有数据站点方面受到损害。因此,我们提议建立一个改革性时间图网络,名为语义强化时间图网络(STGN),将额外的语义信息附加到用户多端的双向图图图图图图中,从而更好地利用表面结构结构结构结构结构学结构学。我们自定时间和结构学模块来进一步提升预测性能。具体来说,为了高效率地整合内容可能拥有的多样化的语义位置,我们设计了一个用户级图位图,我们将一个用户本级数据模型分析的数学模型,我们只用于分析。</s>