自我决定理论视角下学生人工智能学习动机的网络结构分析

IF 3 1区 心理学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Jiajing Li, Jianhua Zhang, Ching Sing Chai, Vivian W Y Lee, Xuesong Zhai, Xingwei Wang, Ronnel B King
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引用次数: 0

摘要

动机是学习的关键驱动力。之前关于动机的研究主要集中在不一定涉及人工智能的传统学习环境中。因此,我们对学生学习人工智能的动机知之甚少。本研究以自我决定理论为理论框架,考察了学生人工智能动机系统的结构。自我决定理论认为,动机有不同的类型,包括内在动机、识别性调节、内源性调节、外部调节和动机。反过来,学生的动机在很大程度上取决于他们对能力、自主性和相关性的基本心理需求是否得到满足。我们使用网络分析来探讨学生人工智能动机的结构。参与者包括来自47所大学的1465名学生。内源性监管是人工智能激励系统的核心,但内在动机则不那么重要。这意味着许多学生学习人工智能主要是出于内疚或羞耻,而不是因为个人享受。此外,在人工智能丰富的学习环境中,能力满意度似乎比自主性和相关性满意度更重要。因此,关键的实际意义包括需要有明确的目标和标准,以及培养学生使用人工智能工具的能力。本研究通过关注学生的动机系统并提出培养更好地参与人工智能的方法,丰富了人工智能教育文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Analyzing the network structure of students' motivation to learn AI: a self-determination theory perspective.

Analyzing the network structure of students' motivation to learn AI: a self-determination theory perspective.

Analyzing the network structure of students' motivation to learn AI: a self-determination theory perspective.

Analyzing the network structure of students' motivation to learn AI: a self-determination theory perspective.

Motivation is a key driver of learning. Prior work on motivation has mostly focused on conventional learning contexts that did not necessarily involve AI. Hence, little is known about students' motivation to learn AI. This study examined the structure of students' AI motivational system using self-determination theory as the theoretical framework. Self-determination theory posits that there are qualitatively distinct types of motivation, including intrinsic motivation, identified regulation, introjected regulation, external regulation, and amotivation. Students' motivation, in turn, is strongly shaped by whether their basic psychological needs for competence, autonomy, and relatedness are satisfied. We used network analysis to explore the structure of students' AI motivation. Participants included 1465 students from 47 universities. Introjected regulation was central to the AI motivational system but intrinsic motivation was less central. This meant that many students learned AI primarily out of guilt or shame and not because of personal enjoyment. Furthermore, competence satisfaction seemed more important than autonomy and relatedness satisfaction in AI-enriched learning environments. Hence, key practical implications include the need to have clear goals and standards as well as to build students' competence in using AI tools. This study enriches the AI education literature by focusing on students' motivational systems and suggesting ways to cultivate better engagement with AI.

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来源期刊
CiteScore
5.40
自引率
7.10%
发文量
29
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