Shapley解释器-用于SDN的gnn的解释方法

Chuanhuang Li, Jiali Lou, Shiyuan Liu, Zebin Chen, Xiaoyong Yuan
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引用次数: 0

摘要

图神经网络(gnn)在软件定义网络(SDN)中得到了广泛的应用,可以更好地进行网络建模和性能预测。然而,深度学习的黑箱特性使得gnn难以解释,这种可解释性问题阻碍了gnn的广泛应用。在本文中,我们提出了Shapley Explainer,它在适当的计算成本范围内为GNN的输入节点提供公平的重要性分数,从而在软件定义网络上对图神经网络提供了有效合理的解释。该方法将shapley值与软离散掩模矩阵相结合,得到拓扑节点的重要性排序。我们将Shapley解释器应用于RouteNet模型,这是一种GNN模型,可提供SDN网络性能指标的智能预测。实验结果表明,Shapley解释器可以为RouteNet提供有效的解释。验证了RouteNet模型能够正确学习特征之间的关系,可以更好地理解RouteNet的预测过程,促进基于gnn的SDN系统在工程实践中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shapley Explainer - An Interpretation Method for GNNs Used in SDN
Graph neural networks (GNNs) have been widely applied in software-defined network (SDN) for better network modeling and performance prediction. However, the black-box characteristic of deep learning makes the GNNs hard to interpret, such interpretability issue hinders the wide use of GNNs. In this paper, we propose Shapley Explainer, that provides fair importance scores to the input nodes of a GNN within an appropriate computation cost, thereby providing a valid and reasonable interpretation of graph neural network on software defined network. The proposed method derives the importance ranking of topological nodes by combining shapley values with a soft discrete mask matrix. We apply Shapley Explainer to RouteNet model, a GNN model that provides intelligent predictions of SDN network performance metrics. The experimental results show that Shapley Explainer can provide effective interpretations for RouteNet. It also verifies that the RouteNet model can correctly learn the relationship between features, which can provide a better understanding of the prediction process of RouteNet, promoting the application of GNN-based SDN systems in engineering practice.
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