With the rapid development of 5th Generation Mobile Communication Technology (5G), the diverse forms of collaboration and extensive data in academic social networks constructed by 5G papers make the management and analysis of academic social networks increasingly challenging. Despite the particular success achieved by representation learning in analyzing academic and social networks, most present presentation learning models focus on maintaining the first-order and second-order similarity of nodes. They rarely possess similar structural characteristics of spatial independence in the network. This paper proposes a Low-order Network representation Learning Model (LNLM) based on Non-negative Matrix Factorization (NMF) to solve these problems. The model uses the random walk method to extract low-order features of nodes and map multiple components to a low-dimensional space, effectively maintaining the internal correlation between members. This paper verifies the performance of this model, conducts comparative experiments on four test datasets and four real network datasets through downstream tasks such as multi-label classification, clustering, and link prediction. Comparing eight mainstream network representation learning models shows that the proposed model can significantly improve the detection efficiency and learning methods and effectively extract local and low-order features of the network.
翻译:随着第五代移动通信技术(5G)的迅速发展,5G文件所建立的学术社会网络中各种形式的协作和广泛数据使学术社会网络的管理和分析越来越具有挑战性。尽管在分析学术和社会网络方面通过代表性学习取得了特别的成功,但大多数介绍式学习模式侧重于维持节点的第一阶和第二阶的相似性,它们很少具备网络空间独立方面的类似结构特征。本文件提议以非负矩阵因数化(NMF)为基础的低级网络代表性学习模型(LNLMM)来解决这些问题。该模型使用随机步行方法将节点的低级特征和多构件绘制到一个低维空间,有效地维护成员之间的内部关联。本文核实了这一模型的性能,对四个测试数据集和四个真正的网络数据集进行比较实验,通过多标签分类、集群和链接预测等下游任务进行。对八个主流网络代表性学习模型进行比较表明,拟议的模型可以大大改进检测效率和学习方法,并有效地提取网络的本地和低级特征。