Towards Continuous Explainability of Complex AI Systems: Challenges and Requirements
摘要
Increasing regulatory influences on artificial intelligence (AI) impose new requirements on the trustworthiness of complex AI systems, i.e., compound software systems using at least one AI method. When embedded in value chains and other regulatory scopes, it must be ensured that AI activities and AI-generated results remain explainable throughout the entire process. This work is motivated by the domain of AI-based requirements engineering in the automotive industry, where the overall objective is to meet homologation requirements with AI-generated content influencing product development. In support thereof, this paper presents two contributions: an orientation framework for the alignment of individual AI explanation use cases in the domain and a set of requirements for AI explanation design following the framework.