论文标题

图形信息瓶颈用于子图识别

Graph Information Bottleneck for Subgraph Recognition

论文作者

Yu, Junchi, Xu, Tingyang, Rong, Yu, Bian, Yatao, Huang, Junzhou, He, Ran

论文摘要

鉴于输入图及其标签/属性,图形学习的几个关键问题,例如查找可解释的子图,图形降解和图形压缩,可以归因于识别原始图的子图的基本问题。该子图应尽可能提供信息,但包含冗余和嘈杂的结构。此问题设置与众所周知的信息瓶颈(IB)原理密切相关,但是,对于不规则的图形数据和图形神经网络(GNNS),研究较少研究。在本文中,我们为深度图学习中的子图识别问题提出了图形信息瓶颈(GIB)的框架。在此框架下,人们可以识别出最大信息丰富但压缩的子图,名为IB-Subgraph。但是,众所周知,GIB目标很难优化,这主要是由于不规则图数据的相互信息和不稳定的优化过程的相互性能。为了应对这些挑战,我们提出:i)基于GIB目标的不规则图数据的相互信息估计器; ii)一种双层优化方案,以最大化GIB目标; iii)连通性损失以稳定优化过程。我们在三种应用程序中评估了IB-Subgraph的属性:图形分类,图形解释和图形降解的改进。广泛的实验表明,信息理论IB-Subgraph具有出色的图形属性。

Given the input graph and its label/property, several key problems of graph learning, such as finding interpretable subgraphs, graph denoising and graph compression, can be attributed to the fundamental problem of recognizing a subgraph of the original one. This subgraph shall be as informative as possible, yet contains less redundant and noisy structure. This problem setting is closely related to the well-known information bottleneck (IB) principle, which, however, has less been studied for the irregular graph data and graph neural networks (GNNs). In this paper, we propose a framework of Graph Information Bottleneck (GIB) for the subgraph recognition problem in deep graph learning. Under this framework, one can recognize the maximally informative yet compressive subgraph, named IB-subgraph. However, the GIB objective is notoriously hard to optimize, mostly due to the intractability of the mutual information of irregular graph data and the unstable optimization process. In order to tackle these challenges, we propose: i) a GIB objective based-on a mutual information estimator for the irregular graph data; ii) a bi-level optimization scheme to maximize the GIB objective; iii) a connectivity loss to stabilize the optimization process. We evaluate the properties of the IB-subgraph in three application scenarios: improvement of graph classification, graph interpretation and graph denoising. Extensive experiments demonstrate that the information-theoretic IB-subgraph enjoys superior graph properties.

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