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AI apology: a critical review of apology in AI systems

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posted on 2025-10-20, 04:55 authored by Hadassah HarlandHadassah Harland, Richard DazeleyRichard Dazeley, Hashini Senaratne, Peter Vamplew, Francisco Cruz, Bahareh NakisaBahareh Nakisa
Abstract Apologies are a powerful tool used in human-human interactions to provide affective support, regulate social processes, and exchange information following a trust violation. The emerging field of AI apology investigates the use of apologies by artificially intelligent systems, with recent research suggesting how this tool may provide similar value in human-machine interactions. Until recently, contributions to this area were sparse, and these works have yet to be synthesised into a cohesive body of knowledge. This article provides the first synthesis and critical analysis of the state of AI apology research, focusing on studies published between 2020 and 2023. We derive a framework of attributes to describe five core elements of apology: outcome, interaction, offence, recipient, and offender. With this framework as the basis for our critique, we show how apologies can be used to recover from misalignment in human-AI interactions, and examine trends and inconsistencies within the field. Among the observations, we outline the importance of curating a human-aligned and cross-disciplinary perspective in this research, with consideration for improved system capabilities and long-term outcomes.

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Open access

  • Yes

Language

eng

Journal

Artificial Intelligence Review

Volume

58

Article number

369

Pagination

1-79

ISSN

0269-2821

eISSN

1573-7462

Issue

12

Publisher

Springer Nature

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