Recently, test time adaptation (TTA) has attracted increasing attention due to its power of handling the distribution shift issue in the real world. Unlike what has been developed for convolutional neural networks (CNNs) for image data, TTA is less explored for Graph Neural Networks (GNNs). There is still a lack of efficient algorithms tailored for graphs with irregular structures. In this paper, we present a novel test time adaptation strategy named Graph Adversarial Pseudo Group Contrast (GAPGC), for graph neural networks TTA, to better adapt to the Out Of Distribution (OOD) test data. Specifically, GAPGC employs a contrastive learning variant as a self-supervised task during TTA, equipped with Adversarial Learnable Augmenter and Group Pseudo-Positive Samples to enhance the relevance between the self-supervised task and the main task, boosting the performance of the main task. Furthermore, we provide theoretical evidence that GAPGC can extract minimal sufficient information for the main task from information theory perspective. Extensive experiments on molecular scaffold OOD dataset demonstrated that the proposed approach achieves state-of-the-art performance on GNNs.
翻译:最近,测试时间调整(TTA)因其在现实世界中处理分布变化问题的力量而引起越来越多的关注。与为图像数据革命神经网络开发的图像数据模型不同,TTA对于图形神经网络的探索较少。仍然缺乏针对结构不正常的图表的高效算法。在本文中,我们提出了一个新的测试时间适应战略,名为图形神经网络TTA(GAPGC),以更好地适应分布变化问题测试数据。具体来说,GAPGC在TA期间采用对比式学习变体,作为自我监督的任务,配有Aversarial可学习的增强器和组化动力模型样本,以加强自我监督任务与主要任务的相关性,促进主要任务的执行。此外,我们提供了理论证据,表明GAPGC能够从信息理论角度为主要任务提取最起码的充足信息。关于ODOD数据设置的分子分子-卡夫勒德的大规模实验,展示了拟议的GODMS的状态表现方法。