Freedom comes at a cost?: An exploratory study on affordances’ impact on users’ perception of a social robot

Guanyu Huang, Roger K. Moore
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Abstract

Along with the development of speech and language technologies, the market for speech-enabled human-robot interactions (HRI) has grown in recent years. However, it is found that people feel their conversational interactions with such robots are far from satisfactory. One of the reasons is the habitability gap, where the usability of a speech-enabled agent drops when its flexibility increases. For social robots, such flexibility is reflected in the diverse choice of robots’ appearances, sounds and behaviours, which shape a robot’s ‘affordance’. Whilst designers or users have enjoyed the freedom of constructing a social robot by integrating off-the-shelf technologies, such freedom comes at a potential cost: the users’ perceptions and satisfaction. Designing appropriate affordances is essential for the quality of HRI. It is hypothesised that a social robot with aligned affordances could create an appropriate perception of the robot and increase users’ satisfaction when speaking with it. Given that previous studies of affordance alignment mainly focus on one interface’s characteristics and face-voice match, we aim to deepen our understanding of affordance alignment with a robot’s behaviours and use cases. In particular, we investigate how a robot’s affordances affect users’ perceptions in different types of use cases. For this purpose, we conducted an exploratory experiment that included three different affordance settings (adult-like, child-like, and robot-like) and three use cases (informative, emotional, and hybrid). Participants were invited to talk to social robots in person. A mixed-methods approach was employed for quantitative and qualitative analysis of 156 interaction samples. The results show that static affordance (face and voice) has a statistically significant effect on the perceived warmth of the first impression; use cases affect people’s perceptions more on perceived competence and warmth before and after interactions. In addition, it shows the importance of aligning static affordance with behavioural affordance. General design principles of behavioural affordances are proposed. We anticipate that our empirical evidence will provide a clearer guideline for speech-enabled social robots’ affordance design. It will be a starting point for more sophisticated design guidelines. For example, personalised affordance design for individual or group users in different contexts.
自由是有代价的?关于 "负担能力 "对用户感知社交机器人的影响的探索性研究
近年来,随着语音和语言技术的发展,支持语音的人机交互(HRI)市场也在不断扩大。然而,人们发现,他们与这些机器人的对话互动远不能令人满意。其中一个原因就是 "适应性差距",即当语音代理的灵活性增加时,其可用性就会下降。对于社交机器人来说,这种灵活性体现在机器人外观、声音和行为的多样化选择上,而这正是机器人的 "可承受性"(affordance)。虽然设计者或用户可以通过整合现成的技术自由地构建社交机器人,但这种自由也有潜在的代价:用户的感知和满意度。设计适当的承受能力对于提高人机交互的质量至关重要。我们的假设是,具有一致的承受能力的社交机器人可以让用户对机器人产生适当的感知,并在与机器人交谈时提高用户的满意度。鉴于以往对承受能力一致性的研究主要集中在一个界面的特征和人脸-声音匹配上,我们的目标是加深对机器人行为和使用案例的承受能力一致性的理解。特别是,我们要研究在不同类型的使用情况下,机器人的承受能力如何影响用户的感知。为此,我们进行了一项探索性实验,其中包括三种不同的承受能力设置(类成人、类儿童和类机器人)和三种使用案例(信息型、情感型和混合型)。我们邀请参与者亲自与社交机器人交谈。我们采用混合方法对 156 个交互样本进行了定量和定性分析。结果表明,静态负担能力(脸部和声音)对第一印象的感知温暖度有显著的统计学影响;在互动前后,使用案例对人们感知能力和温暖度的影响更大。此外,它还表明了将静态可负担性与行为可负担性结合起来的重要性。我们还提出了行为可承受性的一般设计原则。我们预计,我们的经验证据将为语音社交机器人的支付能力设计提供更明确的指导。它将成为更复杂的设计准则的起点。例如,针对个人或群体用户在不同环境下的个性化承受能力设计。
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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