图神经网络可解释性方法的演示

Ehsan Bonabi Mobaraki, Arijit Khan
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引用次数: 1

摘要

图神经网络(gnn)广泛应用于图和节点分类、实体解析、链路预测和问题回答等下游应用。最近提出了几种gnn的可解释性方法。然而,由于它们之间尚未进行彻底的比较,因此它们在潜在gnn和下游应用背景下的权衡和效率尚不清楚。为了支持该领域的更多研究,我们开发了一个端到端交互工具,名为gInterpreter,通过在用于不同下游任务的许多最先进的GNN之上的公共环境中重新实现15种最新的GNN可解释性方法。本文通过15种最新GNN可解释性方法的交互式性能分析来演示gInterpreter,旨在解释图结构数据上复杂的深度学习管道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Demonstration of Interpretability Methods for Graph Neural Networks
Graph neural networks (GNNs) are widely used in many downstream applications, such as graphs and nodes classification, entity resolution, link prediction, and question answering. Several interpretability methods for GNNs have been proposed recently. However, since they have not been thoroughly compared with each other, their trade-offs and efficiency in the context of underlying GNNs and downstream applications are unclear. To support more research in this domain, we develop an end-to-end interactive tool, named gInterpreter, by re-implementing 15 recent GNN interpretability methods in a common environment on top of a number of state-of-the-art GNNs employed for different downstream tasks. This paper demonstrates gInterpreter with an interactive performance profiling of 15 recent GNN inter-pretability methods, aiming to explain the complex deep learning pipelines over graph-structured data.
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