Explaining Recommendations through Conversations: Dialog Model and the Effects of Interface Type and Degree of Interactivity

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Diana C. Hernandez-Bocanegra, J. Ziegler
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引用次数: 1

Abstract

Explaining system-generated recommendations based on user reviews can foster users’ understanding and assessment of the recommended items and the recommender system (RS) as a whole. While up to now explanations have mostly been static, shown in a single presentation unit, some interactive explanatory approaches have emerged in explainable artificial intelligence (XAI), making it easier for users to examine system decisions and to explore arguments according to their information needs. However, little is known about how interactive interfaces should be conceptualized and designed to meet the explanatory aims of transparency, effectiveness, and trust in RS. Thus, we investigate the potential of interactive, conversational explanations in review-based RS and propose an explanation approach inspired by dialog models and formal argument structures. In particular, we investigate users’ perception of two different interface types for presenting explanations, a graphical user interface (GUI)-based dialog consisting of a sequence of explanatory steps, and a chatbot-like natural-language interface. Since providing explanations by means of natural language conversation is a novel approach, there is a lack of understanding how users would formulate their questions with a corresponding lack of datasets. We thus propose an intent model for explanatory queries and describe the development of ConvEx-DS, a dataset containing intent annotations of 1,806 user questions in the domain of hotels, that can be used to to train intent detection methods as part of the development of conversational agents for explainable RS. We validate the model by measuring user-perceived helpfulness of answers given based on the implemented intent detection. Finally, we report on a user study investigating users’ evaluation of the two types of interactive explanations proposed (GUI and chatbot), and to test the effect of varying degrees of interactivity that result in greater or lesser access to explanatory information. By using Structural Equation Modeling, we reveal details on the relationships between the perceived quality of an explanation and the explanatory objectives of transparency, trust, and effectiveness. Our results show that providing interactive options for scrutinizing explanatory arguments has a significant positive influence on the evaluation by users (compared to low interactive alternatives). Results also suggest that user characteristics such as decision-making style may have a significant influence on the evaluation of different types of interactive explanation interfaces.
通过对话解释建议:对话模型和界面类型和交互性程度的影响
解释基于用户评论的系统生成的推荐可以促进用户对推荐项目和推荐系统(RS)作为一个整体的理解和评估。虽然到目前为止,解释大多是静态的,以单个表示单元显示,但在可解释人工智能(XAI)中出现了一些交互式解释方法,使用户更容易检查系统决策并根据他们的信息需求探索论点。然而,对于交互界面应该如何概念化和设计以满足RS中透明度、有效性和信任的解释目标,我们知之甚少。因此,我们研究了基于评论的RS中交互式对话解释的潜力,并提出了一种受对话模型和正式论证结构启发的解释方法。我们特别研究了用户对两种不同界面类型的感知,一种是基于图形用户界面(GUI)的对话框,由一系列解释步骤组成,另一种是类似聊天机器人的自然语言界面。由于通过自然语言对话提供解释是一种新颖的方法,因此缺乏对用户如何在相应缺乏数据集的情况下提出问题的理解。因此,我们提出了一个用于解释性查询的意图模型,并描述了ConvEx-DS的开发,ConvEx-DS是一个包含酒店领域1806个用户问题的意图注释的数据集,可用于训练意图检测方法,作为可解释RS的会话代理开发的一部分。我们通过测量基于实现的意图检测给出的答案的用户感知有用性来验证模型。最后,我们报告了一项用户研究,调查了用户对所提出的两种类型的交互解释(GUI和聊天机器人)的评价,并测试了不同程度的交互性对解释信息访问的影响。通过使用结构方程模型,我们揭示了解释的感知质量与透明度、信任和有效性的解释目标之间关系的细节。我们的研究结果表明,提供交互式选项来审查解释性论点对用户的评价有显著的积极影响(与低交互性替代方案相比)。结果还表明,决策风格等用户特征可能会对不同类型的交互式解释界面的评价产生显著影响。
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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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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