In general, Graph Neural Networks(GNN) have been using a message passing method to aggregate and summarize information about neighbors to express their information. Nonetheless, previous studies have shown that the performance of graph neural networks becomes vulnerable when there are abnormal nodes in the neighborhood due to this message passing method. In this paper, inspired by the Neural Architecture Search method, we present an algorithm that recognizes abnormal nodes and automatically excludes them from information aggregation. Experiments on various real worlds datasets show that our proposed Neural Architecture Search-based Anomaly Resistance Graph Neural Network (NASAR-GNN) is actually effective.
翻译:一般而言,图神经网络(GNN)一直使用电文传递方法汇总和汇总关于邻居的信息以表达信息,然而,以往的研究显示,由于电文传递方法,附近有异常节点时,图形神经网络的性能就变得脆弱。在本文中,在神经结构搜索方法的启发下,我们提出了一个算法,该算法承认异常节点并自动将其排除在信息汇总之外。各种真实世界数据集的实验显示,我们拟议的神经结构搜索异常抵抗图神经网络(NASAR-GNN)实际上有效。