Graph data structures are fundamental for studying connected entities. With an increase in the number of applications where data is represented as graphs, the problem of graph generation has recently become a hot topic in many signal processing areas. However, despite its significance, conditional graph generation that creates graphs with desired features is relatively less explored in previous studies. This paper addresses the problem of class-conditional graph generation that uses class labels as generation constraints by introducing the Class Conditioned Graph Generator (CCGG). We built CCGG by adding the class information as an additional input to a graph generator model and including a classification loss in its total loss along with a gradient passing trick. Our experiments show that CCGG outperforms existing conditional graph generation methods on various datasets. It also manages to maintain the quality of the generated graphs in terms of distribution-based evaluation metrics.
翻译:图表数据结构是研究关联实体的基础。随着数据以图表形式呈现的应用程序数量的增加,图表生成问题最近已成为许多信号处理领域的热题。然而,尽管其意义重大,在以往的研究中,创造具有理想特征的图表的有条件图形生成相对较少探讨。本文件通过采用分类调节图形生成器(CCGG),解决使用类别标签作为生成制约的分类有条件图形生成问题。我们通过将类信息添加成图表生成器(CGG),将分类信息作为附加输入图形生成器(CGG),并加上一个梯度传递技巧,将分类损失纳入总损失中。我们的实验显示,CGGG在各种数据集上比现有的有条件图形生成方法要好得多。它还设法保持了以分布为基础的评价度标码生成的图表的质量。