This work proposes a novel general framework, in the context of eXplainable Artificial Intelligence (XAI), to construct explanations for the behaviour of Machine Learning (ML) models in terms of middle-level features. One can isolate two different ways to provide explanations in the context of XAI: low and middle-level explanations. Middle-level explanations have been introduced for alleviating some deficiencies of low-level explanations such as, in the context of image classification, the fact that human users are left with a significant interpretive burden: starting from low-level explanations, one has to identify properties of the overall input that are perceptually salient for the human visual system. However, a general approach to correctly evaluate the elements of middle-level explanations with respect ML model responses has never been proposed in the literature.
翻译:这项工作提出了一个新的总体框架,在可移植人工智能(XAI)背景下,从中层特征的角度对机器学习模型的行为进行解释。可以将解释解释的两种不同方式分离为 XAI背景下的解释:低和中层解释。为减轻低层次解释的一些缺陷,引入了中层解释,例如,在图像分类方面,人类用户承受着巨大的解释负担:从低层次解释开始,人们必须确定对人视觉系统具有明显意义的总体投入的特性;然而,文献中从未提出过一种一般方法,正确评价中层解释中与ML模型反应有关的要素。