Robustifying GNN Via Weighted Laplacian

Bharat Runwal, Vivek, Sandeep Kumar
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Abstract

Graph neural network (GNN) is achieving remarkable performances in a variety of application domains. However, GNN is vulnerable to noise and adversarial attacks in input data. Making GNN robust against noises and adversarial attacks is an important problem. The existing defense methods for GNNs are computationally demanding, are not scalable, and are architecture dependent. In this paper, we propose a generic framework for robustifying GNN known as Weighted Laplacian GNN (RWLGNN). The method combines Weighted Graph Laplacian learning with the GNN implementation. The proposed method benefits from the positive semi-definiteness property of Laplacian matrix, feature smoothness, and latent features via formulating a unified optimization framework, which ensures the adversarial/noisy edges are discarded and connections in the graph are appropriately weighted. For demonstration, the experiments are conducted with Graph convolutional neural network(GCNN) architecture, however, the proposed framework is easily amenable to any existing GNN architecture. The simulation results with benchmark dataset establish the efficacy of the proposed method over the state-of-the-art methods, both in accuracy and computational efficiency.
基于加权拉普拉斯算子的GNN鲁棒化
图神经网络(GNN)在许多应用领域都取得了令人瞩目的成绩。然而,GNN容易受到输入数据中的噪声和对抗性攻击。使GNN对噪声和对抗性攻击具有鲁棒性是一个重要的问题。现有的gnn防御方法对计算量要求高,不可扩展,并且依赖于体系结构。在本文中,我们提出了一种通用的鲁棒GNN框架,称为加权拉普拉斯GNN (RWLGNN)。该方法将加权图拉普拉斯学习与GNN实现相结合。该方法通过制定统一的优化框架,充分利用拉普拉斯矩阵的正半确定性、特征平滑性和潜在特征,保证了图中对抗/噪声边被丢弃,连接被适当加权。为了验证,实验是用图卷积神经网络(GCNN)架构进行的,然而,所提出的框架很容易适用于任何现有的GNN架构。基于基准数据集的仿真结果表明,该方法在精度和计算效率方面都优于现有方法。
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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