Autonomous Generation of Robust and Focused Explanations for Robot Policies

Oliver Struckmeier, M. Racca, V. Kyrki
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引用次数: 4

Abstract

Transparency of robot behaviors increases efficiency and quality of interactions with humans. To increase transparency of robot policies, we propose a method for generating robust and focused explanations that express why a robot chose a particular action. The proposed method examines the policy based on the state space in which an action was chosen and describes it in natural language. The method can generate focused explanations by leaving out irrelevant state dimensions, and avoid explanations that are sensitive to small perturbations or have ambiguous natural language concepts. Furthermore, the method is agnostic to the policy representation and only requires the policy to be evaluated at different samples of the state space. We conducted a user study with 18 participants to investigate the usability of the proposed method compared to a comprehensive method that generates explanations using all dimensions. We observed how focused explanations helped the subjects more reliably detect the irrelevant dimensions of the explained system and how preferences regarding explanation styles and their expected characteristics greatly differ among the participants.
机器人策略的鲁棒和集中解释的自主生成
机器人行为的透明度提高了与人类互动的效率和质量。为了增加机器人策略的透明度,我们提出了一种方法来生成鲁棒和集中的解释,来表达机器人为什么选择特定的动作。该方法基于选择动作的状态空间检查策略,并用自然语言进行描述。该方法可以通过忽略不相关的状态维度来生成集中的解释,并避免对小扰动敏感或具有模糊自然语言概念的解释。此外,该方法与策略表示无关,只需要在状态空间的不同样本上评估策略。我们对18名参与者进行了一项用户研究,以调查与使用所有维度生成解释的综合方法相比,所提出方法的可用性。我们观察到重点解释如何帮助受试者更可靠地检测被解释系统的不相关维度,以及参与者对解释风格及其预期特征的偏好如何存在巨大差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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