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Discovering SOCIABLE: Using a Conceptual Model to Evaluate the Legibility and Effectiveness of Backchannel Cues in an Entertainment Scenario

机译:发现社交:使用概念模型评估娱乐场景中反向频道提示的易读性和有效性

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Robots are expected to become part of everyday life. However, while there have been important breakthroughs during the recent decades in terms of technological advances, the ability of robots to interact with humans intuitively and effectively is still an open challenge.In this paper, we aim to evaluate how humans interpret and leverage backchannel cues exhibited by a robot which interacts with them in an entertainment context. To do so, a conceptual model was designed to investigate the legibility and the effectiveness of a designed social cue, called SOCial ImmediAcy BackchanneL cuE (SOCIABLE), on participant’s performance. In addition, user’s attitude and cognitive capability were integrated into the model as an estimator of participants’ motivation and ability to process the cue. In working toward such a goal, we conducted a two-day long user study (N=114) at an international event with untrained participants who were not aware of the social cue the robot was able to provide. The results showed that participants were able to perceive the social signal generated from SOCIABLE and thus, they benefited from it. Our findings provide some important insights for the design of effective and instantaneous backchannel cues and the methodology for evaluating them in social robots.
机译:机器人有望成为日常生活的一部分。但是,尽管近几十年来在技术进步方面取得了重大突破,但机器人直观,有效地与人类交互的能力仍然是一个开放的挑战。本文旨在评估人类如何解释和利用反向通道线索由在娱乐环境中与他们互动的机器人展示。为此,设计了一个概念模型来调查设计的社交提示(称为SOCial ImmediAcy BackchanneL cuE(SOCIABLE))对参与者的表现的易读性和有效性。此外,用户的态度和认知能力已整合到模型中,以评估参与者的动机和处理线索的能力。为了实现这一目标,我们在一项国际活动中进行了为期两天的用户研究(N = 114),其中未经培训的参与者不了解机器人能够提供的社交提示。结果表明,参与者能够感知到由SOCIABLE产生的社交信号,因此,他们从中受益。我们的发现为有效和即时反向通道提示的设计以及在社交机器人中对其进行评估的方法提供了一些重要见解。

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