In the meantime, a wide variety of terminologies, motivations, approaches, and evaluation criteria have been developed within the research field of explainable artificial intelligence (XAI). With the amount of XAI methods vastly growing, a taxonomy of methods is needed by researchers as well as practitioners: To grasp the breadth of the topic, compare methods, and to select the right XAI method based on traits required by a specific use-case context. Many taxonomies for XAI methods of varying level of detail and depth can be found in the literature. While they often have a different focus, they also exhibit many points of overlap. This paper unifies these efforts and provides a complete taxonomy of XAI methods with respect to notions present in the current state of research. In a structured literature analysis and meta-study, we identified and reviewed more than 50 of the most cited and current surveys on XAI methods, metrics, and method traits. After summarizing them in a survey of surveys, we merge terminologies and concepts of the articles into a unified structured taxonomy. Single concepts therein are illustrated by more than 50 diverse selected example methods in total, which we categorize accordingly. The taxonomy may serve both beginners, researchers, and practitioners as a reference and wide-ranging overview of XAI method traits and aspects. Hence, it provides foundations for targeted, use-case-oriented, and context-sensitive future research.
翻译:同时,在可解释的人工智能(XAI)研究领域,已经制定了多种多样的术语、动机、方法和评价标准。随着XAI方法的大量增加,研究人员和从业者需要对方法进行分类:为了掌握专题的广度,比较方法,并根据特定使用情况要求的特征选择正确的XAI方法。在文献中可以找到许多关于XAI方法的详细和深度程度不一的分类,虽然它们往往有不同的侧重点,但也显示出许多重叠点。随着XAI方法的数量大大增加,研究人员和从业者需要就目前研究状况中存在的概念对XAI方法进行完整的分类。在结构化的文献分析和元研究中,我们确定并审查了50多份关于XAI方法、指标和方法特征的最新和最新调查,在调查中总结了这些方法之后,我们将条款的术语和概念合并成一个统一的结构化的分类。其中的单一概念由50多个选定的实例加以说明,从研究基础开始对X类研究进行全面的分类,并据此对研究进行分类。