Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy

The integration of artificial intelligence (AI) technologies into education has gained increasing attention, yet limited research examines how the curriculum design can enhance learning outcomes and influence learners’ intentions to continue AI learning. This study addresses this gap by integrating...

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Main Authors: Shao-Hsun Chang, Kai-Chao Yao, Yao-Ting Chen, Cheng-Yang Chung, Wei-Lun Huang, Wei-Sho Ho
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Information
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Online Access:https://www.mdpi.com/2078-2489/16/1/50
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author Shao-Hsun Chang
Kai-Chao Yao
Yao-Ting Chen
Cheng-Yang Chung
Wei-Lun Huang
Wei-Sho Ho
author_facet Shao-Hsun Chang
Kai-Chao Yao
Yao-Ting Chen
Cheng-Yang Chung
Wei-Lun Huang
Wei-Sho Ho
author_sort Shao-Hsun Chang
collection DOAJ
description The integration of artificial intelligence (AI) technologies into education has gained increasing attention, yet limited research examines how the curriculum design can enhance learning outcomes and influence learners’ intentions to continue AI learning. This study addresses this gap by integrating the theory of planned behavior, technology acceptance model, theories of motivation, and computer self-efficacy to explore the factors affecting learners’ behavioral intentions in AI education. Using the AI course quality as the primary antecedent and “intention to continue taking courses” as the dependent variable, the study investigates the structural relationships and mediating variables between these factors. Data were collected through a stratified random sampling method from 19 universities in Taiwan, involving 200 students who had completed five core AI-related courses, including artificial intelligence, machine learning, internet of things, big data, and robotics. The analysis, conducted using PLS-SEM, revealed that AI course quality directly and indirectly influences learners’ behavioral intentions through mediating variables such as learning satisfaction, computer self-efficacy, technological literacy, and computer learning motivation. Moreover, AI course quality exerted a significant positive effect on computer motivation, which, in turn, influenced self-efficacy and learning outcomes. These findings provide valuable insights into the antecedents and processes shaping learners’ intentions to continue AI learning, offering practical and theoretical implications for AI education.
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spelling doaj-art-0eb852c0d528459fab7a268858e07dec2025-01-24T13:35:16ZengMDPI AGInformation2078-24892025-01-011615010.3390/info16010050Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-EfficacyShao-Hsun Chang0Kai-Chao Yao1Yao-Ting Chen2Cheng-Yang Chung3Wei-Lun Huang4Wei-Sho Ho5Department of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanDepartment of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanDepartment of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanDepartment of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanDepartment of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanDepartment of Industrial Education and Technology, National Changhua University of Education, Bao-Shan Campus, No. 2, Shi-Da Rd, Changhua City 500208, TaiwanThe integration of artificial intelligence (AI) technologies into education has gained increasing attention, yet limited research examines how the curriculum design can enhance learning outcomes and influence learners’ intentions to continue AI learning. This study addresses this gap by integrating the theory of planned behavior, technology acceptance model, theories of motivation, and computer self-efficacy to explore the factors affecting learners’ behavioral intentions in AI education. Using the AI course quality as the primary antecedent and “intention to continue taking courses” as the dependent variable, the study investigates the structural relationships and mediating variables between these factors. Data were collected through a stratified random sampling method from 19 universities in Taiwan, involving 200 students who had completed five core AI-related courses, including artificial intelligence, machine learning, internet of things, big data, and robotics. The analysis, conducted using PLS-SEM, revealed that AI course quality directly and indirectly influences learners’ behavioral intentions through mediating variables such as learning satisfaction, computer self-efficacy, technological literacy, and computer learning motivation. Moreover, AI course quality exerted a significant positive effect on computer motivation, which, in turn, influenced self-efficacy and learning outcomes. These findings provide valuable insights into the antecedents and processes shaping learners’ intentions to continue AI learning, offering practical and theoretical implications for AI education.https://www.mdpi.com/2078-2489/16/1/50artificial intelligence (AI)technological literacyplanned behavior theorymotivation theorytechnology acceptance model
spellingShingle Shao-Hsun Chang
Kai-Chao Yao
Yao-Ting Chen
Cheng-Yang Chung
Wei-Lun Huang
Wei-Sho Ho
Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
Information
artificial intelligence (AI)
technological literacy
planned behavior theory
motivation theory
technology acceptance model
title Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
title_full Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
title_fullStr Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
title_full_unstemmed Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
title_short Integrating Motivation Theory into the AIED Curriculum for Technical Education: Examining the Impact on Learning Outcomes and the Moderating Role of Computer Self-Efficacy
title_sort integrating motivation theory into the aied curriculum for technical education examining the impact on learning outcomes and the moderating role of computer self efficacy
topic artificial intelligence (AI)
technological literacy
planned behavior theory
motivation theory
technology acceptance model
url https://www.mdpi.com/2078-2489/16/1/50
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