人工智能经验、信息冗余和熟悉程度在形成主动学习中的作用:智能个人助理的启示

IF 4.8 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Education and Information Technologies Pub Date : 2024-07-26 DOI:10.1007/s10639-024-12895-6
Shaofeng Wang, Zhuo Sun
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引用次数: 0

摘要

人工智能(AI)正越来越多地融入教育环境,其中智能个人助理(IPA)发挥着重要作用。然而,这些人工智能助手对培养主动学习行为的心理影响还有待进一步了解。本研究针对这一空白,提出了一个理论模型来概述和预测主动学习动态。我们从 237 份经过验证的问卷中收集了数据,并使用偏最小二乘法结构方程模型进行了分析。我们的结果证实了模型中提出的大多数假设,信息冗余对主动学习产生了意想不到的消极和间接影响,而感知熟悉度和系统质量则是积极的驱动因素。感知有用性、易用性和便利性等关键中介因素对主动学习结果有显著的正向影响。有趣的是,人工智能经验对感知易用性、感知便利性和主动学习之间的关系起着积极的调节作用。本研究最令人震惊和意想不到的发现是,相对于高科技学习方法,大学生更喜欢熟悉的系统。这一结果挑战了年轻一代总是热衷于采用最新技术的普遍看法。相反,我们的研究结果表明,学生更看重学习系统的方便性和熟悉性,而不是新颖性。这种偏好反映在他们的系统评价中,方便和熟悉被认为是最优先考虑的因素。这项研究为人工智能丰富学习体验的潜力提供了有价值的见解,因此对国际商务教育中人工智能感兴趣的专业人士尤为重要。
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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Roles of artificial intelligence experience, information redundancy, and familiarity in shaping active learning: Insights from intelligent personal assistants

Artificial Intelligence (AI) is increasingly being integrated into educational settings, with Intelligent Personal Assistants (IPAs) playing a significant role. However, the psychological impact of these AI assistants on fostering active learning behaviors needs to be better understood. This research study addresses this gap by proposing a theoretical model to outline and predict active learning dynamics. Data was collected from 237 validated questionnaires and analyzed using partial least squares structural equation modeling. Our results confirm most hypotheses advanced in our model, and information redundancy has an unexpected negative and indirect influence on active learning, while perceived familiarity and system quality are positive drivers. Crucial mediators such as perceived usefulness, ease of use, and convenience significantly positively influence active learning outcomes. Interestingly, the relationship between perceived ease of use, perceived convenience, and active learning is positively moderated by AI experience. The most striking and unexpected finding of this study is the preference of university students for familiar systems over high-tech learning methods. This result challenges the common belief that the younger generation is always eager to adopt the latest technology. Instead, our findings suggest that students value convenience and familiarity over novelty in learning systems. This preference is reflected in their systematic evaluation, where convenience and familiarity are considered top priorities. This study provides valuable insights into the potential of AI to enrich the learning experience, thus making it especially relevant to professionals interested in artificial intelligence in international business education.

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来源期刊
Education and Information Technologies
Education and Information Technologies EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
10.00
自引率
12.70%
发文量
610
期刊介绍: The Journal of Education and Information Technologies (EAIT) is a platform for the range of debates and issues in the field of Computing Education as well as the many uses of information and communication technology (ICT) across many educational subjects and sectors. It probes the use of computing to improve education and learning in a variety of settings, platforms and environments. The journal aims to provide perspectives at all levels, from the micro level of specific pedagogical approaches in Computing Education and applications or instances of use in classrooms, to macro concerns of national policies and major projects; from pre-school classes to adults in tertiary institutions; from teachers and administrators to researchers and designers; from institutions to online and lifelong learning. The journal is embedded in the research and practice of professionals within the contemporary global context and its breadth and scope encourage debate on fundamental issues at all levels and from different research paradigms and learning theories. The journal does not proselytize on behalf of the technologies (whether they be mobile, desktop, interactive, virtual, games-based or learning management systems) but rather provokes debate on all the complex relationships within and between computing and education, whether they are in informal or formal settings. It probes state of the art technologies in Computing Education and it also considers the design and evaluation of digital educational artefacts.  The journal aims to maintain and expand its international standing by careful selection on merit of the papers submitted, thus providing a credible ongoing forum for debate and scholarly discourse. Special Issues are occasionally published to cover particular issues in depth. EAIT invites readers to submit papers that draw inferences, probe theory and create new knowledge that informs practice, policy and scholarship. Readers are also invited to comment and reflect upon the argument and opinions published. EAIT is the official journal of the Technical Committee on Education of the International Federation for Information Processing (IFIP) in partnership with UNESCO.
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