The Role of Lexical Alignment in Human Understanding of Explanations by Conversational Agents

S. Srivastava, M. Theune, Alejandro Catalá
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Abstract

Explainable Artificial Intelligence (XAI) focuses on research and technology that can explain an AI system’s functioning and its underlying methods, and also on making these explanations better through personalization. Our research study investigates a natural language personalization method called lexical alignment in understanding an explanation provided by a conversational agent. The study setup was online and navigated the participants through an interaction with a conversational agent. Participants faced either an agent designed to align its responses to those of the participants, a misaligned agent, or a control condition that did not involve any dialogue. The dialogue delivered an explanation based on a pre-defined set of causes and effects. The recall and understanding of the explanations was evaluated using a combination of Yes-No questions, a Cloze test (fill-in-the-blanks), and What-style questions. The analysis of the test scores revealed a significant advantage in information recall for those who interacted with an aligning agent against the participants who either interacted with a non-aligning agent or did not go through any dialogue. The Yes-No type questions that included probes on higher-order inferences (understanding) also reflected an advantage for the participants who had an aligned dialogue against both non-aligned and no dialogue conditions. The results overall suggest a positive effect of lexical alignment on understanding of explanations.
词汇对齐在人类理解会话代理解释中的作用
可解释人工智能(XAI)专注于能够解释人工智能系统功能及其底层方法的研究和技术,以及通过个性化使这些解释更好。我们的研究探讨了一种被称为词汇对齐的自然语言个性化方法,用于理解会话代理提供的解释。研究设置是在线的,并通过与对话代理的互动来引导参与者。参与者面对的是一个旨在使其反应与参与者的反应一致的代理,一个不一致的代理,或者一个不涉及任何对话的控制条件。对话提供了一个基于预先定义的一系列因果关系的解释。对解释的回忆和理解是用是-否问题、完形填空测试和what类型问题的组合来评估的。对测试分数的分析显示,与与非对齐代理互动或没有进行任何对话的参与者相比,与对齐代理互动的参与者在信息回忆方面具有显著优势。包括对高阶推理(理解)的探究的是-否型问题也反映了与不结盟和无对话条件下进行结盟对话的参与者的优势。总体而言,结果表明词汇对齐对理解解释有积极影响。
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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