AILGLOMar 17, 2020

Directions for Explainable Knowledge-Enabled Systems

arXiv:2003.07523v136 citations
AI Analysis

This work provides a framework for designing explainable AI systems, but it is incremental as it builds on existing literature without introducing new methods or data.

The authors surveyed explanation literature in AI to define a set of explanation types that address expanded needs like trustworthiness and context-awareness, aiming to help system designers generate better-aligned explanations.

Interest in the field of Explainable Artificial Intelligence has been growing for decades and has accelerated recently. As Artificial Intelligence models have become more complex, and often more opaque, with the incorporation of complex machine learning techniques, explainability has become more critical. Recently, researchers have been investigating and tackling explainability with a user-centric focus, looking for explanations to consider trustworthiness, comprehensibility, explicit provenance, and context-awareness. In this chapter, we leverage our survey of explanation literature in Artificial Intelligence and closely related fields and use these past efforts to generate a set of explanation types that we feel reflect the expanded needs of explanation for today's artificial intelligence applications. We define each type and provide an example question that would motivate the need for this style of explanation. We believe this set of explanation types will help future system designers in their generation and prioritization of requirements and further help generate explanations that are better aligned to users' and situational needs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes