AIMAMar 27, 2023

Interactive Explanations by Conflict Resolution via Argumentative Exchanges

arXiv:2303.15022v227 citationsh-index: 50
Originality Incremental advance
AI Analysis

This addresses the need for interactive explanations in AI systems for users, though it is incremental as it builds on existing computational argumentation methods.

The paper tackles the lack of interactive explanations in explainable AI by proposing Argumentative eXchanges (AXs) for conflict resolution between agents, showing experimentally in simulations that these exchanges improve conflict resolution and that the strongest argument is not always most effective.

As the field of explainable AI (XAI) is maturing, calls for interactive explanations for (the outputs of) AI models are growing, but the state-of-the-art predominantly focuses on static explanations. In this paper, we focus instead on interactive explanations framed as conflict resolution between agents (i.e. AI models and/or humans) by leveraging on computational argumentation. Specifically, we define Argumentative eXchanges (AXs) for dynamically sharing, in multi-agent systems, information harboured in individual agents' quantitative bipolar argumentation frameworks towards resolving conflicts amongst the agents. We then deploy AXs in the XAI setting in which a machine and a human interact about the machine's predictions. We identify and assess several theoretical properties characterising AXs that are suitable for XAI. Finally, we instantiate AXs for XAI by defining various agent behaviours, e.g. capturing counterfactual patterns of reasoning in machines and highlighting the effects of cognitive biases in humans. We show experimentally (in a simulated environment) the comparative advantages of these behaviours in terms of conflict resolution, and show that the strongest argument may not always be the most effective.

Foundations

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