Abstract
Moodle is widely used in higher education institutions in this digital age. With the growing popularity of Moodle use in education, this study aimed to research on the factors that influence student users’ intentions to adopt Moodle for learning purposes in Macau. A total of 564 students from nine departments at the University of Macau responded to a survey in which ten constructs from a framework that integrated the Diffusion of Innovation Theory and Technology Acceptance Model, were measured. The results of this study showed that the research model had a good fit. Two variables—usefulness and ease of use—had significantly influenced Macau students’ attitudes towards Moodle use. Other variables such as usefulness, attitude, and perceived behavioral control were found to be important determinants of students’ behavioral intentions. Furthermore, usefulness was significantly associated with ease of use, output quality, trialability, as well as subjective norm. Students’ perceptions on the ease of use was significantly influenced by technology complexity and trialability. On the whole, the proposed research model had explained 66% of the variance of Macau university students’ behavioral intentions to use Moodle. This study contributed to deepening our understanding of technology acceptance theories by contextualizing the current study within the Macau higher education.
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Appendix A: constructs and corresponding items
Appendix A: constructs and corresponding items
Perceived usefulness (adapted from Davis 1989; Teo 2009)
PU1: Using Moodle enables me to learn more quickly.
PU2: Using Moodle improves my performance in learning.
PU3: Using Moodle increases my productivity in learning.
PU4: Using Moodle enhances my effectiveness in learning.
PU5: Using Moodle is useful to learning.
Perceived ease of use (adapted from Davis 1989; Teo 2009)
PEU1: It is easy for me to use Moodle in learning to do what I want to do.
PEU2: My interaction with Moodle in learning is simple.
PEU3: It is easy for me to become good at using Moodle in learning.
PEU4: I find Moodle easy to use in learning.
Attitude towards using Moodle (adapted from Davis 1989; Teo 2009)
ATU1: Once I start using Moodle in learning, I find it hard to stop.
ATU2: I look forward to those aspects of learning that require the use of Moodle.
ATU3: I like to use Moodle in learning.
ATU4: I have positive feelings towards the use of Moodle in learning.
Behavioral intention (adapted from Davis 1989; Teo 2009)
BI1: I intend to continue to use Moodle in learning in the future.
BI2: I expect that I would use Moodle in learning in the future.
BI3: I plan to use Moodle in learning in the future.
Technology complexity (adapted from Teo 2009; Thompson et al. 1991)
TC1: Learning with Moodle is so complicated that it is difficult to understand what is going on.
TC2: It takes too long to learn how to use Moodle in learning, such that it is not worth the effort.
TC3: Using Moodle in learning is a complex activity.
Subjective norm (adapted from Fishbein and Ajzen 1975, Teo et al. 2018)
SN1: People who influence my behavior think that I should use Moodle in learning.
SN2: People who are important to me think that I should use Moodle in learning.
SN3: The people whose views I respect support the use of Moodle in learning.
Perceived behavioral control (adapted from Ajzen 1991; Zhou 2016)
PBC1: I have control over Moodle at learning.
PBC2: I have the resources necessary to use Moodle in learning.
PBC3: I have the knowledge necessary to use Moodle in learning.
PBC4: Given the resources, opportunities and knowledge, it is easy for me to use Moodle in learning.
Computer anxiety (adapted from Venkatesh 2000; Abdullah et al. 2016)
ANX1: I feel apprehensive about using Moodle in learning.
ANX2: I hesitate to use Moodle in learning for fear of making mistakes I cannot correct.
ANX3: Using Moodle in learning is intimidating to me.
Output quality (adapted from Venkatesh 2000; Jan and Contreras 2016)
OUT1: Compared to what I had done, using Moodle has improved the quality of learning.
OUT2: Compared to what I had done, using Moodle has made learning easier.
OUT3: Compared to what I had done, using Moodle has enhanced my effectiveness in learning.
OUT4: Compared to what I had done, using Moodle has increased my productivity in learning.
Trialability (adapted from Rogers 1995; Lee et al. 2011).
TRI1: Before using Moodle, I can use it on a trial basis for learning.
TRI2: Before using Moodle, I can test the functions properly for learning.
TRI3: Before using Moodle, I can ensure that it meets my needs in learning.
TRI4: Before using Moodle, I can ensure that it matches my expectations in learning.
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Teo, T., Zhou, M., Fan, A.C.W. et al. Factors that influence university students’ intention to use Moodle: a study in Macau. Education Tech Research Dev 67, 749–766 (2019). https://doi.org/10.1007/s11423-019-09650-x
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DOI: https://doi.org/10.1007/s11423-019-09650-x