Examining Student Acceptance and Intention to Continue Online Digital Learning: A Case Study at Public Universities in Surakarta

Neerzalla Atha Nafisah, Khansa Bashira Pondavi, Charisma Cintani Adhi Surya, Haiva Putri Palmaisyah, Retno Wulan Damayanti

Abstract

This study aims to examine students’ acceptance and continuance intention toward digital learning platforms, with a focus on Coursera MOOCs (Massive Open Online Courses). The research investigates six variables: Computer Self-Efficacy (CSE), System Interactivity (SI), Content Feature (CF), Perceived Usefulness (PU), Perceived Ease of Use (PE), and Intention to Continue (IC). A quantitative approach was employed using a structured questionnaire distributed to 182 students at Public Universities in Surakarta who had participated in Coursera-based MOOCs. Prior to data analysis, validity, reliability, and classical assumption tests (normality, multicollinearity, heteroscedasticity, and autocorrelation) were conducted to ensure the robustness of the model. The data were analyzed using linear regression to examine the relationships among the variables. The results reveal that CSE and CF have significant effects on PU and PE, whereas SI shows no significant influence. Furthermore, PU and PE significantly affect students’ IC, with PU emerging as the most influential factor driving students’ continuance intention. These findings suggest that students’ ongoing engagement with digital learning platforms is largely determined by their perceived usefulness of the system rather than its interactive features. Despite potential sampling bias due to online group distribution, this limitation was minimized through multi-department dissemination. Overall, the study provides empirical insights into the key determinants supporting the sustainability of MOOC-based learning in higher education.

Keywords

acceptance; digital learning; intention; MOOCs; online platform

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References

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