Graph Neural Networks for Complex Graphs

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Abstract

In the earlier chapters, we have discussed graph neural network models focusing on simple graphs where the graphs are static and have only one type of nodes and one type of edges. However, graphs in many real-world applications are much more complicated. They typically have multiple types of nodes, edges, unique structures, and often are dynamic. As a consequence, these complex graphs present more intricate patterns that are beyond the capacity of the aforementioned graph neural network models on simple graphs. Thus, dedicated efforts are desired to design graph neural network models for complex graphs. These efforts can significantly impact the successful adoption and use of GNNs in a broader range of applications. In this chapter, using complex graphs introduced in Section 2.6 as examples, we discuss the methods to extend the graph neural network models to capture more sophisticated patterns. More specifically, we describe more advanced graph filters designed for complex graphs to capture their specific properties.
复杂图的图神经网络
在前面的章节中,我们讨论了关注简单图的图神经网络模型,其中图是静态的,只有一种类型的节点和一种类型的边。然而,许多实际应用程序中的图形要复杂得多。它们通常具有多种类型的节点、边、独特的结构,并且通常是动态的。因此,这些复杂的图呈现出更复杂的模式,超出了前面提到的简单图上的图神经网络模型的能力。因此,需要专门的努力来设计复杂图的图神经网络模型。这些努力可以显著影响gnn在更广泛应用中的成功采用和使用。在本章中,我们将以2.6节介绍的复杂图为例,讨论扩展图神经网络模型以捕获更复杂模式的方法。更具体地说,我们描述了为复杂图设计的更高级的图过滤器,以捕获它们的特定属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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