Instructive artificial intelligence (AI) for human training, assistance, and explainability
Nicholas Kantack, Nina Cohen, Nathan Bos, Corey Lowman, James Everett,, and Timothy Endres

TL;DR
This paper introduces Instructive AI, a novel explainable AI approach that teaches humans to improve their strategies by observing and modifying their actions, demonstrated through experiments in a cooperative card game.
Contribution
The paper presents a new Instructive AI method that estimates human strategies and provides actionable instructions to enhance human performance and understanding in AI-human teaming.
Findings
Instructive AI improves human decision-making in Hanabi.
The approach helps humans better understand AI strategies.
Experimental results show enhanced human-AI collaboration.
Abstract
We propose a novel approach to explainable AI (XAI) based on the concept of "instruction" from neural networks. In this case study, we demonstrate how a superhuman neural network might instruct human trainees as an alternative to traditional approaches to XAI. Specifically, an AI examines human actions and calculates variations on the human strategy that lead to better performance. Experiments with a JHU/APL-developed AI player for the cooperative card game Hanabi suggest this technique makes unique contributions to explainability while improving human performance. One area of focus for Instructive AI is in the significant discrepancies that can arise between a human's actual strategy and the strategy they profess to use. This inaccurate self-assessment presents a barrier for XAI, since explanations of an AI's strategy may not be properly understood or implemented by human recipients.…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
