GMMDA: Gaussian mixture modeling of graph in latent space for graph data augmentation

IF 2.5 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yanjin Li, Linchuan Xu, Kenji Yamanishi
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引用次数: 0

Abstract

Graph data augmentation (GDA), which manipulates graph structure and/or attributes, has been demonstrated as an effective method for improving the generalization of graph neural networks on semi-supervised node classification. As a data augmentation technique, label preservation is critical, that is, node labels should not change after data manipulation. However, most existing methods overlook the label preservation requirements. Determining the label-preserving nature of a GDA method is highly challenging, owing to the non-Euclidean nature of the graph structure. In this study, for the first time, we formulate a label-preserving problem (LPP) in the context of GDA. The LPP is formulated as an optimization problem in which, given a fixed augmentation budget, the objective is to find an augmented graph with minimal difference in data distribution compared to the original graph. To solve the LPP problem, we propose GMMDA, a generative data augmentation (DA) method based on Gaussian mixture modeling (GMM) of a graph in a latent space. We designed a novel learning objective that jointly learns a low-dimensional graph representation and estimates the GMM. The learning is followed by sampling from the GMM, and the samples are converted back to the graph as additional nodes. To uphold label preservation, we designed a minimum description length (MDL)-based method to select a set of samples that produces the minimum shift in the data distribution captured by the GMM. Through experiments, we demonstrate that GMMDA can improve the performance of graph convolutional network on Cora, Citeseer and Pubmed by as much as \(7.75\%\), \(8.75\%\) and \(5.87\%\), respectively, significantly outperforming the state-of-the-art methods.

Abstract Image

GMMDA:潜空间图形高斯混合建模,用于图形数据扩增
图数据增强(GDA)是对图结构和/或属性的操作,已被证明是提高图神经网络在半监督节点分类中的泛化能力的有效方法。作为一种数据增强技术,标签保存至关重要,即节点标签在数据处理后不应发生变化。然而,现有的大多数方法都忽略了标签保存的要求。由于图结构的非欧几里得性质,确定 GDA 方法的标签保留性质极具挑战性。在本研究中,我们首次在 GDA 的背景下提出了标签保留问题(LPP)。LPP 被表述为一个优化问题,在该问题中,给定一个固定的扩增预算,目标是找到一个与原始图相比数据分布差异最小的扩增图。为了解决 LPP 问题,我们提出了 GMMDA,这是一种基于潜空间图的高斯混合建模(GMM)的生成式数据增强(DA)方法。我们设计了一种新颖的学习目标,它可以联合学习低维图表示并估计 GMM。学习结束后从 GMM 中采样,然后将采样转换回图,作为附加节点。为了维护标签,我们设计了一种基于最小描述长度(MDL)的方法来选择一组样本,使 GMM 所捕捉的数据分布产生最小的偏移。通过实验,我们证明了GMMDA可以提高图卷积网络在Cora、Citeseer和Pubmed上的性能,分别高达(7.75%)、(8.75%)和(5.87%),明显优于最先进的方法。
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来源期刊
Knowledge and Information Systems
Knowledge and Information Systems 工程技术-计算机:人工智能
CiteScore
5.70
自引率
7.40%
发文量
152
审稿时长
7.2 months
期刊介绍: Knowledge and Information Systems (KAIS) provides an international forum for researchers and professionals to share their knowledge and report new advances on all topics related to knowledge systems and advanced information systems. This monthly peer-reviewed archival journal publishes state-of-the-art research reports on emerging topics in KAIS, reviews of important techniques in related areas, and application papers of interest to a general readership.
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