论文标题

张量图卷积网络,用于多个关系和强大的学习

Tensor Graph Convolutional Networks for Multi-relational and Robust Learning

论文作者

Ioannidis, Vassilis N., Marques, Antonio G., Giannakis, Georgios B.

论文摘要

“数据洪水”的时代激发了人们对基于图的学​​习方法及其广泛应用的兴趣,从社会学和生物学到运输和通信。在这种图形感知方法的背景下,本文从与图形集合相关的数据中引入了可扩展半监督学习(SSL)的张量 - 图形卷积网络(TGCN),该数据由张量表示。新型TGCN结构的关键方面是通过可学习的权重对张量图中不同关系的动态适应,以及考虑基于图的正则化剂以促进平滑度并减轻过度参数化。最终目标是设计一个能够:发现复杂且高度非线性数据关联的功能强大的学习体系结构,结合(和选择)多种类型的关系,优雅地与图形大小扩展,并保持强大的范围,以在图形边缘上扰动。所提出的体系结构不仅与节点自然涉及不同关系的应用相关(例如,在社交网络中捕获家庭,友谊和工作关系的多个关系图),而且在强大的学习设置中,图形需要一定的不确定级别,以及不同的Tensor slabs以及不同的tensor slabs对应于不同的版本(现实图)。数值测试表明,相对于标准GCN,应对最先进的对抗性攻击,所提出的体系结构显着提高了性能,并导致蛋白质与蛋白质相互作用网络的SSL性能出色。

The era of "data deluge" has sparked renewed interest in graph-based learning methods and their widespread applications ranging from sociology and biology to transportation and communications. In this context of graph-aware methods, the present paper introduces a tensor-graph convolutional network (TGCN) for scalable semi-supervised learning (SSL) from data associated with a collection of graphs, that are represented by a tensor. Key aspects of the novel TGCN architecture are the dynamic adaptation to different relations in the tensor graph via learnable weights, and the consideration of graph-based regularizers to promote smoothness and alleviate over-parameterization. The ultimate goal is to design a powerful learning architecture able to: discover complex and highly nonlinear data associations, combine (and select) multiple types of relations, scale gracefully with the graph size, and remain robust to perturbations on the graph edges. The proposed architecture is relevant not only in applications where the nodes are naturally involved in different relations (e.g., a multi-relational graph capturing family, friendship and work relations in a social network), but also in robust learning setups where the graph entails a certain level of uncertainty, and the different tensor slabs correspond to different versions (realizations) of the nominal graph. Numerical tests showcase that the proposed architecture achieves markedly improved performance relative to standard GCNs, copes with state-of-the-art adversarial attacks, and leads to remarkable SSL performance over protein-to-protein interaction networks.

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