惰性思维与 ChatGPT 依赖性之间的关系:I-PACE 模型视角

IF 4.8 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Education and Information Technologies Pub Date : 2024-08-26 DOI:10.1007/s10639-024-12966-8
Jian-Hong Ye, Mengmeng Zhang, Weiguaju Nong, Li Wang, Xiantong Yang
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引用次数: 0

摘要

作为生成式人工智能的一个范例,ChatGPT 在强大的计算模型和大数据支持下,拥有高级对话和问题解决能力。然而,ChatGPT 的强大性能可能会增强学习者的依赖性。虽然尚未得到证实,但许多教师和学者也在关注这一问题。因此,有必要对这一问题作进一步研究。本研究的目的是基于 "人--影响--认知--执行 "交互模型(I-PACE),探讨惰性思维、对 ChatGPT 的积极体验、回避学习动机与 ChatGPT 依赖性之间的关联。我们采用横断面设计,对平均年龄为 22.81 岁的 870 名台湾大学生进行了在线调查。研究发现,惰性思维与 ChatGPT 的积极体验和 ChatGPT 依赖性均呈正相关。此外,研究还发现惰性思维与回避学习动机之间存在重要关联。ChatGPT 的积极体验也与回避学习动机和 ChatGPT 依赖性呈正相关。由于有关生成式人工智能的实证研究很少,人们在讨论人工智能时所担心的问题在本研究中得到了证实。此外,回避学习动机与 ChatGPT 依赖性呈正相关。基于这些发现,本研究呼吁教育工作者帮助学生克服惰性思维和回避型学习动机,以防止对新兴技术产生依赖。
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The relationship between inert thinking and ChatGPT dependence: An I-PACE model perspective

ChatGPT, as an example of generative artificial intelligence, possesses high-level conversational and problem-solving capabilities supported by powerful computational models and big data. However, the powerful performance of ChatGPT might enhance learner dependency. Although it has not yet been confirmed, many teachers and scholars are also concerned about this issue. Therefore, it is necessary to investigate this topic further. This study’s objective is to explore the association between inert thinking, positive experiences with ChatGPT, avoidance learning motivation, and ChatGPT dependence, based on the Interaction of Person-Affect-Cognition-Execution (I-PACE) model. Employing a cross-sectional design, we conducted an online survey with 870 Taiwanese university students, who had an average age of 22.81 years. The study found that inert thinking was positively associated with both positive experiences with ChatGPT and ChatGPT dependence. Furthermore, a significant association was found between inert thinking and avoidance learning motivation. Positive experience with ChatGPT was also positively related to avoidance learning motivation and ChatGPT dependence. Due to the scarcity of empirical research on generative artificial intelligence, the issues that people worry about when discussing AI were confirmed in this study. Moreover, avoidance learning motivation was positively correlated with ChatGPT dependence. Based on these findings, this study calls for educators to help students overcome inert thinking and avoidance learning motivation to prevent dependency on emerging technologies.

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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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