Rajabi Enayat, Etminani Kobra
Shannon School of Business, Cape Breton University, Canada.
Center for Applied Intelligent Systems Research (CAISR), Halmstad University, Sweden.
J Inf Sci. 2024 Aug;50(4):1019-1029. doi: 10.1177/01655515221112844. Epub 2022 Sep 24.
In recent years, knowledge graphs (KGs) have been widely applied in various domains for different purposes. The semantic model of KGs can represent knowledge through a hierarchical structure based on classes of entities, their properties, and their relationships. The construction of large KGs can enable the integration of heterogeneous information sources and help Artificial Intelligence (AI) systems be more explainable and interpretable. This systematic review examines a selection of recent publications to understand how KGs are currently being used in eXplainable AI systems. To achieve this goal, we design a framework and divide the use of KGs into four categories: extracting features, extracting relationships, constructing KGs, and KG reasoning. We also identify where KGs are mostly used in eXplainable AI systems (pre-model, in-model, and post-model) according to the aforementioned categories. Based on our analysis, KGs have been mainly used in pre-model XAI for feature and relation extraction. They were also utilised for inference and reasoning in post-model XAI. We found several studies that leveraged KGs to explain the XAI models in the healthcare domain.
近年来,知识图谱(KGs)已被广泛应用于各个领域以实现不同目的。知识图谱的语义模型可以通过基于实体类、其属性及其关系的层次结构来表示知识。大型知识图谱的构建能够实现异构信息源的整合,并有助于人工智能(AI)系统更具可解释性。本系统综述考察了近期的一系列出版物,以了解知识图谱目前在可解释人工智能系统中的应用方式。为实现这一目标,我们设计了一个框架,并将知识图谱的应用分为四类:提取特征、提取关系、构建知识图谱和知识图谱推理。我们还根据上述类别确定了知识图谱在可解释人工智能系统中最常被使用的位置(模型前、模型中和模型后)。基于我们的分析,知识图谱主要用于模型前的可解释人工智能,用于特征和关系提取。它们也被用于模型后的可解释人工智能中的推理。我们发现了几项利用知识图谱来解释医疗保健领域可解释人工智能模型的研究。