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Contact Name
Andrian Saputra
Contact Email
andriansaputra@fkip.unila.ac.id
Phone
+6285768233166
Journal Mail Official
jpmipa@fkip.unila.ac.id
Editorial Address
FKIP Universitas Lampung Jl. Prof. Dr. Ir. Sumantri Brojonegoro, Gedong Meneng, Kec. Rajabasa, Kota Bandar Lampung
Location
Kota bandar lampung,
Lampung
INDONESIA
Jurnal Pendidikan MIPA
Published by Universitas Lampung
ISSN : 14112531     EISSN : 26855488     DOI : http://doi.org/10.23960/jpmipa
Core Subject : Education,
Jurnal Pendidikan MIPA (JPMIPA) focused on mathematics education, science education, and the use of technology in the educational field. In more detail, the scope of interest are, but not limited to: STEM/STEAM Education Environmental and Sustainability Education Scientific Literacy Computer-based Education and Digital Competence Higher Order Thinking Skills Multicultural and Inclusive Education Attitude towards Mathematics and Science Learning Models, Methods, Strategies of Math & Science Learning Virtual and Blended Learning Teacher Education
Articles 1 Documents
Search results for "Integrating Trust and Perceived Performance into the Expectation-Confirmation Model" : 1 Documents clear
Integrating Trust and Perceived Performance into the Expectation-Confirmation Model: A Mixed-Methods Study on Generative AI Persistence Purwita, Anggraeni Widya; Sari, Anisa Yunita
Jurnal Pendidikan MIPA Vol 26, No 4 (2025): Jurnal Pendidikan MIPA
Publisher : FKIP Universitas Lampung

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.23960/jpmipa.v26i4.pp2637-2650

Abstract

The rapid adoption of Generative AI in tertiary education has changed how students obtain, process, and assess learning information, but little is known about how satisfied they will be in the long term and the persistence intention towards such technologies. This research paper discusses why students were satisfied and wanted to continue using AI-based learning tools, according to the Expectation Confirmation Theory (ECT). A sequential mixed-methods design was used to collect quantitative data from 106 university students across Education, Engineering Computer Science, and Health Sciences majors. Quantitative data were analyzed using PLS-SEM, and an eventual semi-structured interview of eight subjects was used to validate the quantitative data. The findings suggest that all the variables of expectation, perceived performance, confirmation, and satisfaction are important predictors of continuance intention. However, perceived performance is the most effective predictor. There is a statistically significant but weak relationship between expectations and confirmation, and students' confirmation is likely influenced more by their experience with AI performance than by their initial expectations. These findings are also supported by qualitative evidence indicating that the reliability, contextual relevance, and trustworthiness of AI systems strongly impact student satisfaction and confidence in AI-based learning. The study highlights the significance of perceived performance and trust as key factors in maintaining the use of AI in education. In theory, it uses the Expectation Confirmation Theory, incorporating ethical awareness and reliability as contextual factors that affect satisfaction and continuance intention. In practice, this means that AI developers and teachers need to be more transparent about their algorithms, accurate, and ethically literate to build trust and foster meaningful interaction with AI in higher education.    Keywords: expectation confirmation theory, gen ai, student satisfaction, continuance intention, higher education.

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