图神经网络能否得到充分解释?一项调查

IF 23.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Xuyan Li, Jie Wang, Zheng Yan
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引用次数: 0

摘要

为了解决深度学习(DL)的黑箱性质给实际部署带来的障碍,可解释人工智能(XAI)应运而生,并正在迅速发展。虽然针对图像和文本的深度学习模型的解释技术已取得重大进展,但针对图数据的深度学习模型的解释研究仍处于起步阶段。随着图形神经网络(GNN)在各种网络分析任务中显示出优越性,其可解释性也得到了学术界和工业界的关注。然而,尽管图神经网络的解释方法越来越多,但目前既没有对它们进行精细分类,也没有一套用于定量和定性评估的整体评价标准。为了填补这一空白,我们在本文中对现有的 GNN 解释方法进行了全面调查。具体来说,我们提出了一种新颖的 GNN 解释方法四维分类法,并从正确性、鲁棒性、可用性、可理解性和计算复杂性等方面总结了评价标准。基于该分类法和标准,我们全面回顾了 GNN 解释方法的最新进展,并分析了其利弊。最后,我们指出了一系列开放性问题,并提出了未来的研究方向,以促进 GNN 领域的 XAI 研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Graph Neural Networks be Adequately Explained? A Survey
To address the barrier caused by the black-box nature of Deep Learning (DL) for practical deployment, eXplainable Artificial Intelligence (XAI) has emerged and is developing rapidly. While significant progress has been made in explanation techniques for DL models targeted to images and texts, research on explaining DL models for graph data is still in its infancy. As Graph Neural Networks (GNNs) have shown superiority over various network analysis tasks, their explainability has also gained attention from both academia and industry. However, despite the increasing number of GNN explanation methods, there is currently neither a fine-grained taxonomy of them, nor a holistic set of evaluation criteria for quantitative and qualitative evaluation. To fill this gap, we conduct a comprehensive survey on existing explanation methods of GNNs in this paper. Specifically, we propose a novel four-dimensional taxonomy of GNN explanation methods and summarize evaluation criteria in terms of correctness, robustness, usability, understandability, and computational complexity. Based on the taxonomy and criteria, we thoroughly review the recent advances in GNN explanation methods and analyze their pros and cons. In the end, we identify a series of open issues and put forward future research directions to facilitate XAI research in the field of GNNs.
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来源期刊
ACM Computing Surveys
ACM Computing Surveys 工程技术-计算机:理论方法
CiteScore
33.20
自引率
0.60%
发文量
372
审稿时长
12 months
期刊介绍: ACM Computing Surveys is an academic journal that focuses on publishing surveys and tutorials on various areas of computing research and practice. The journal aims to provide comprehensive and easily understandable articles that guide readers through the literature and help them understand topics outside their specialties. In terms of impact, CSUR has a high reputation with a 2022 Impact Factor of 16.6. It is ranked 3rd out of 111 journals in the field of Computer Science Theory & Methods. ACM Computing Surveys is indexed and abstracted in various services, including AI2 Semantic Scholar, Baidu, Clarivate/ISI: JCR, CNKI, DeepDyve, DTU, EBSCO: EDS/HOST, and IET Inspec, among others.
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