Structural features are important features in a geometrical graph. Although there are some correlation analysis of features based on covariance, there is no relevant research on structural feature correlation analysis with graph neural networks. In this paper, we introuduce graph feature to feature (Fea2Fea) prediction pipelines in a low dimensional space to explore some preliminary results on structural feature correlation, which is based on graph neural network. The results show that there exists high correlation between some of the structural features. An irredundant feature combination with initial node features, which is filtered by graph neural network has improved its classification accuracy in some graph-based tasks. We compare differences between concatenation methods on connecting embeddings between features and show that the simplest is the best. We generalize on the synthetic geometric graphs and certify the results on prediction difficulty between structural features.
翻译:几何图中的结构特征是重要的特征。 虽然对基于共变的特征进行了一些相关分析, 但对于与图形神经网络的结构性特征关联分析没有进行相关的研究。 在本文中, 我们将低维空间的图形特征引入低维空间的预测管道( Fea2Fea), 以探索基于图形神经网络的结构性特征相关性的一些初步结果。 结果表明, 一些结构特征之间存在高度的关联性。 由图形神经网络过滤的与初始节点特征的互不相容性结合提高了图形神经网络在某些基于图形的任务中的分类准确性。 我们比较了连接特征间嵌入的组合方法之间的差异, 并表明最简单的是最好的。 我们对合成几何图形进行了概括, 并验证了结构特征之间预测难度的结果 。