Graph-based semi-supervised learning, which can exploit the connectivity relationship between labeled and unlabeled data, has been shown to outperform the state-of-the-art in many artificial intelligence applications. One of the most challenging problems for graph-based semi-supervised node classification is how to use the implicit information among various data to improve the performance of classifying. Traditional studies on graph-based semi-supervised learning have focused on the pairwise connections among data. However, the data correlation in real applications could be beyond pairwise and more complicated. The density information has been demonstrated to be an important clue, but it is rarely explored in depth among existing graph-based semi-supervised node classification methods. To develop a flexible and effective model for graph-based semi-supervised node classification, we propose a novel Density-Aware Hyper-Graph Neural Networks (DA-HGNN). In our proposed approach, hyper-graph is provided to explore the high-order semantic correlation among data, and a density-aware hyper-graph attention network is presented to explore the high-order connection relationship. Extensive experiments are conducted in various benchmark datasets, and the results demonstrate the effectiveness of the proposed approach.
翻译:基于图形的半监督节点分类的最棘手问题是如何利用各种数据之间的隐含信息来改进分类工作。基于图形的半监督节点分类。关于半监督半监督的半监督学习的传统研究侧重于数据之间的对称连接。然而,实际应用中的数据相关性可能超出对称和更加复杂的范围。密度信息已被证明是一个重要的线索,但在现有基于图形的半监督节点分类方法中很少深入探讨。为了为基于图形的半监督节点分类开发一个灵活有效的模型,我们提议了一个新的Density-Aware super-Graph Neural网络(DA-HGNNN) 。在我们提议的方法中,提供了超光谱来探索数据之间的高端语系相关性,而一个密度观测高射线关注网络则用来探索基于图形的半监督节点分类方法的高度连接关系。在各种基准关系中,进行了广泛的实验,以探索拟议的高端连接率。