Levels of explainable artificial intelligence for human-aligned conversational explanations
It addresses the need for deeper, more comprehensive explanations in AI to improve public trust and acceptance, though it is incremental as it builds on existing XAI research.
This paper tackles the problem that current explainable AI (XAI) methods provide only low-level, narrow explanations, which are insufficient for human trust and acceptance of AI decisions. It proposes defining levels of explanation and integrating them into a human-aligned conversational system to achieve high-level, strong explanations.
Over the last few years there has been rapid research growth into eXplainable Artificial Intelligence (XAI) and the closely aligned Interpretable Machine Learning (IML). Drivers for this growth include recent legislative changes and increased investments by industry and governments, along with increased concern from the general public. People are affected by autonomous decisions every day and the public need to understand the decision-making process to accept the outcomes. However, the vast majority of the applications of XAI/IML are focused on providing low-level `narrow' explanations of how an individual decision was reached based on a particular datum. While important, these explanations rarely provide insights into an agent's: beliefs and motivations; hypotheses of other (human, animal or AI) agents' intentions; interpretation of external cultural expectations; or, processes used to generate its own explanation. Yet all of these factors, we propose, are essential to providing the explanatory depth that people require to accept and trust the AI's decision-making. This paper aims to define levels of explanation and describe how they can be integrated to create a human-aligned conversational explanation system. In so doing, this paper will survey current approaches and discuss the integration of different technologies to achieve these levels with Broad eXplainable Artificial Intelligence (Broad-XAI), and thereby move towards high-level `strong' explanations.