在多媒体学习环境中使用多个人工智能语音作为专家虚拟导师的认知益处

IF 3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Tze Wei Liew, Su-Mae Tan, Tak Jie Chan, Yang Tian, Faizan Ahmad
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引用次数: 0

摘要

有限的先前研究提供了一些证据,证明在多媒体学习环境中使用多个教学代理(每个代理分配到不同的知识库)对认知和学习有好处。然而,这些发现的后续研究和扩展仍然很少。为了解决这一差距,我们利用多媒体学习和认知模型来研究使用多个人工智能语音作为不同编程算法子主题的专家虚拟导师对认知负荷和学习结果的影响。本研究采用被试间实验设计,以基本程式设计知识的商科学一年级本科生为研究对象。参与者观看了一段多媒体学习视频,由一个人工智能声音或三个不同的人工智能声音讲述,每个声音都有一个不同的小主题。认知负荷是通过调查来测量的,而学习成果是通过即时和两周延迟后测来评估的,包括记忆、近迁移和远迁移任务。结果表明,与单一人工智能语音条件下的参与者相比,多重人工智能语音条件下的参与者报告的内在和外在认知负荷显著降低。此外,多个人工智能语音组在即时和延迟保留,以及即时远转移任务和延迟近转移任务方面都优于单个人工智能语音组。本研究在实证上扩展了先前关于在多媒体学习环境中使用多个人工智能语音作为虚拟导师的认知效果的研究。它提供了初步证据,表明使用独特的声音来区分子主题可以有利于认知负荷和学习成果,对利用人工智能文本到语音引擎来模拟不同教学主题的多个虚拟导师具有理论和教学设计意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cognitive Benefits of Employing Multiple AI Voices as Specialist Virtual Tutors in a Multimedia Learning Environment

Cognitive Benefits of Employing Multiple AI Voices as Specialist Virtual Tutors in a Multimedia Learning Environment

Limited prior research provides some evidence of the cognitive and learning benefits of employing multiple pedagogical agents, each assigned to distinct knowledge bases, in a multimedia learning environment. However, follow-up studies and extensions of these findings remain scarce. To address this gap, we draw on multimedia learning and cognitive models to investigate the effects of using multiple AI voices as specialist virtual tutors for distinct programming algorithm subtopics on cognitive load and learning outcomes. A between-subjects experimental design was employed with first-year business undergraduates who had minimal programming knowledge. Participants engaged with a multimedia learning video, narrated either by a single AI voice or by three distinct AI voices, each assigned to a different subtopic. Cognitive load was measured via a survey, while learning outcomes were assessed using immediate and 2-week delayed posttests covering retention, near-transfer, and far-transfer tasks. Results indicated that participants in the multiple AI voice condition reported significantly lower intrinsic and extraneous cognitive load compared to those in the single AI voice condition. Furthermore, the multiple AI voice group outperformed the single AI voice group in both immediate and delayed retention, as well as in immediate far-transfer tasks and delayed near-transfer. This study empirically extends prior research on the cognitive effects of using multiple AI voices as virtual tutors in multimedia learning environments. It offers preliminary evidence that using unique voices to distinguish subtopics can benefit cognitive load and learning outcomes, with theoretical and instructional design implications for leveraging AI text-to-speech engines to simulate multiple virtual tutors for distinct instructional topics.

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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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