Experiential learning has been known to be an engaging and effective modality for personal and professional development. The Metaverse provides ample opportunities for the creation of environments in which such experiential learning can occur. In this work, we introduce a novel architecture that combines Artificial intelligence and Virtual Reality to create a highly immersive and efficient learning experience using avatars. The framework allows us to measure the interpersonal effectiveness of an individual interacting with the avatar. We first present a small pilot study and its results which were used to enhance the framework. We then present a larger study using the enhanced framework to measure, assess, and predict the interpersonal effectiveness of individuals interacting with an avatar. Results reveal that individuals with deficits in their interpersonal effectiveness show a significant improvement in performance after multiple interactions with an avatar. The results also reveal that individuals interact naturally with avatars within this framework, and exhibit similar behavioral traits as they would in the real world. We use this as a basis to analyze the underlying audio and video data streams of individuals during these interactions. Finally, we extract relevant features from these data and present a machine-learning based approach to predict interpersonal effectiveness during human-avatar conversation. We conclude by discussing the implications of these findings to build beneficial applications for the real world.
翻译:实验性学习被公认为是个人和专业发展的一种有吸引力和有效的方式。 元数据为创造这种体验性学习的环境提供了充足的机会。 在这项工作中, 我们引入了一个新的结构, 将人工智能和虚拟现实结合起来, 以便利用人工智能和虚拟现实创造出高度沉浸和有效的学习经验。 这个框架让我们能够测量个人与动因互动的人际效率。 我们首先提出一个小型的试点研究及其结果, 用来加强框架。 我们然后利用强化框架提出一个更大的研究, 以衡量、评估和预测与阿凡达互动的个人人际有效性。 结果显示, 人际有效性不足的个人在与阿凡达进行多次互动后的表现显著改善。 结果还显示, 个人在这个框架内自然地与阿凡达进行互动, 并表现出与真实世界中个人互动的类似行为特征。 我们以此为基础分析个人在这些互动过程中的音频和视频数据流。 最后, 我们从这些数据中提取相关特征, 并展示一个机器学习的方法, 以预测人际对话期间的人际效率。