Would you be impressed: applying principles of magic to chatbot conversations

Sarah Rose Siskind, Eric Nichols, Randy Gomez
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Abstract

A magician’s trick and a chatbot conversation have something in common: most of their audiences do not know how they work. Both are also constrained by their own limitations: magicians by the constraints of biology and physics, and dialogue systems by the status of current technology. Magicians and chatbot creators also share a goal: they want to engage their audience. But magicians, unlike the designers of dialogue systems, have centuries of practice in gracefully skirting limitations in order to engage their audience and enhance a sense of awe. In this paper, we look at these practices and identify several key principles of magic and psychology to apply to conversations between chatbots and humans. We formulate a model of communication centered on controlling the user’s attention, expectations, decisions, and memory based on examples from the history of magic. We apply these magic principles to real-world conversations between humans and a social robot and evaluate their effectiveness in a Magical conversation setting compared to a Control conversation that does not incorporate magic principles. We find that human evaluators preferred interactions that incorporated magical principles over interactions that did not. In particular, magical interactions increased 1) the personalization of experience, 2) user engagement, and 3) character likability. Firstly, the magical experience was “personalized.” According to survey results, the magical conversation demonstrated a statistically significant increase in “emotional connection” and “robot familiarity.” Therefore, the personalization of the experience leads to higher levels of perceived impressiveness and emotional connection. Secondly, in the Magical conversation, we find that the human interlocutor is perceived to have statistically-significantly higher engagement levels in four of seven characteristics. Thirdly, participants judged the robot in the magical conversation to have a significantly greater degree of “energeticness,”“humorousness,” and “interestingness.” Finally, evaluation of the conversations with questions intended to measure contribution of the magical principals showed statistically-significant differences for five out of nine principles, indicating a positive contribution of the magical principles to the perceived conversation experience. Overall, our evaluation demonstrates that the psychological principles underlying a magician’s showmanship can be applied to the design of conversational systems to achieve more personalized, engaging, and fun interactions.
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你会被打动吗:将魔术原理应用于聊天机器人对话
魔术师的魔术和聊天机器人的对话有一个共同点:它们的大多数受众都不知道它们是如何运作的。两者都受到自身局限的限制:魔术师受到生物学和物理学的限制,而对话系统则受到当前技术水平的限制。魔术师和聊天机器人的创造者还有一个共同的目标:他们都想吸引观众。但魔术师与对话系统设计者不同,他们拥有数百年的实践经验,可以优雅地绕过各种限制,吸引观众并增强敬畏感。在本文中,我们将研究这些实践,并找出魔术和心理学的几个关键原则,将其应用到聊天机器人与人类的对话中。我们以魔术史上的例子为基础,制定了一个以控制用户注意力、期望、决定和记忆为中心的交流模型。我们将这些魔法原则应用于人类与社交机器人之间的真实对话,并评估了魔法对话与不包含魔法原则的控制对话相比的效果。我们发现,人类评估者更喜欢包含魔法原则的互动,而不是不包含魔法原则的互动。特别是,魔法互动提高了:1)体验的个性化;2)用户参与度;3)角色的可爱度。首先,魔法体验是 "个性化 "的。根据调查结果,魔法对话在 "情感联系 "和 "机器人熟悉度 "方面有显著的统计学增长。因此,个性化体验会带来更高水平的感知印象和情感联系。其次,在 "神奇对话 "中,我们发现人类对话者在七个特征中的四个特征上被认为具有统计意义上更高的参与度。第三,在神奇对话中,参与者认为机器人的 "活力"、"幽默 "和 "有趣 "程度明显更高。最后,用旨在衡量神奇原则贡献的问题对对话进行评估,结果显示九项原则中有五项在统计上有显著差异,表明神奇原则对感知对话体验有积极贡献。总之,我们的评估结果表明,魔术师表演技巧所依据的心理学原理可以应用于对话系统的设计,从而实现更加个性化、更有吸引力和更有趣的互动。
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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