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引用次数: 4

摘要

训练模型的不稳定性,即单个节点预测对随机因素的依赖,会影响机器学习系统的可重复性、可靠性和信任度。在本文中,我们系统地评估了最先进的图神经网络(gnn)节点分类的预测不稳定性。通过我们的实验,我们建立了在相同数据上使用相同模型超参数训练的流行GNN模型的多个实例产生几乎相同的聚合性能,但在单个节点的预测中显示出实质性的分歧。我们发现,在不同的算法运行中,多达三分之一的错误分类节点是不同的。我们确定了超参数、节点属性和训练集大小与预测稳定性之间的相关性。一般来说,最大化模型性能也隐含地减少了模型的不稳定性。
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On the Prediction Instability of Graph Neural Networks
Instability of trained models, i.e., the dependence of individual node predictions on random factors, can affect reproducibility, reliability, and trust in machine learning systems. In this paper, we systematically assess the prediction instability of node classification with state-of-the-art Graph Neural Networks (GNNs). With our experiments, we establish that multiple instantiations of popular GNN models trained on the same data with the same model hyperparameters result in almost identical aggregated performance but display substantial disagreement in the predictions for individual nodes. We find that up to one third of the incorrectly classified nodes differ across algorithm runs. We identify correlations between hyperparameters, node properties, and the size of the training set with the stability of predictions. In general, maximizing model performance implicitly also reduces model instability.
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