Foundations of explanations as model reconciliation

作者:

摘要

Past work on plan explanations primarily involved the AI system explaining the correctness of its plan and the rationale for its decision in terms of its own model. Such soliloquy is wholly inadequate in most realistic scenarios where users have domain and task models that differ from that used by the AI system. We posit that the explanations are best studied in light of these differing models. In particular, we show how explanation can be seen as a “model reconciliation problem” (MRP), where the AI system in effect suggests changes to the user's mental model so as to make its plan be optimal with respect to that changed user model. We will study the properties of such explanations, present algorithms for automatically computing them, discuss relevant extensions to the basic framework, and evaluate the performance of the proposed algorithms both empirically and through controlled user studies.

论文关键词:Explainable AI,Automated planning,Mental models

论文评审过程:Received 30 April 2020, Revised 15 July 2021, Accepted 19 July 2021, Available online 26 July 2021, Version of Record 10 August 2021.

论文官网地址:https://doi.org/10.1016/j.artint.2021.103558