One-way Explainability Isn't The Message
Ashwin Srinivasan, Michael Bain, Enrico Coiera

TL;DR
This paper advocates for a two-way, iterative approach to explainability in human-machine systems, emphasizing mutual intelligibility over one-way explanations to enhance collaboration in complex decision-making.
Contribution
It introduces the concept of Intelligibility Axioms, guiding principles for designing collaborative decision-support systems with mutual understanding.
Findings
Examples from drug design and medicine demonstrate the axioms in practice.
Highlights the importance of bidirectional information exchange.
Proposes additional requirements for effective collaboration.
Abstract
Recent engineering developments in specialised computational hardware, data-acquisition and storage technology have seen the emergence of Machine Learning (ML) as a powerful form of data analysis with widespread applicability beyond its historical roots in the design of autonomous agents. However -- possibly because of its origins in the development of agents capable of self-discovery -- relatively little attention has been paid to the interaction between people and ML. In this paper we are concerned with the use of ML in automated or semi-automated tools that assist one or more human decision makers. We argue that requirements on both human and machine in this context are significantly different to the use of ML either as part of autonomous agents for self-discovery or as part statistical data analysis. Our principal position is that the design of such human-machine systems should be…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Scientific Computing and Data Management · Data Stream Mining Techniques
