4. Discussion
The present research aimed to study higher education students’ perceptions of GenAI tools as learning tools. The research results indicated that the means of affect, interaction, and efficiency were significantly medium, while the mean of intention was significantly high. The previous results could indicate the characteristics of students’ perceptions of new technologies such as AI bots. Work with these bots has not yet been established as a tool in higher education, and students are meanwhile practicing and attempting to verify the new tools’ potentialities. This explains the medium level of efficiency, interaction, and affect. Still, the students in higher education intend to continue using AI bots in their learning, probably due to the benefits of this use, especially as they know that the potentialities of these bots improve continuously [
19].
Ayanwale and Ndlovu [
28] reported that there were no direct relationships between perceived usefulness and perceived ease of use, concluding that there were other influencing factors or dynamics in the adoption of chatbots for educational purposes. Here, though the level of students’ perceptions of AI bots was medium, their intention to use them was high. Thus, other influencing factors could be involved. We claim that the factors here could be the changing potentialities of AI bots in learning practices.
The research findings showed that in three of the four perception components (efficiency, affect, and intention), male students had significantly higher perceptions of AI tools than female students, but in the interaction component, the two genders did not differ significantly. Tondeur et al. [
29] found that women had a less positive attitude towards computers in general, but not towards computers for educational purposes, where the attitude towards computers for educational purposes did not differ significantly due to gender [
29]. The present research addressed the educational context of GenAI tools. It agrees with that of Tondeur et al. [
29] in one component only. The present results here agree in particular with the results of Tondeur et al. [
29] regarding technology in general.
An alternative explanation for the gender differences might be found in the frequency of GenAI bots’ use. Nyaaba et al. [
30] reported that male pre-service teachers used these tools significantly more often than their female counterparts. This frequent usage could logically lead to more positive perceptions of GenAI tools for learning among male students. This interpretation suggests that exposure to and familiarity with GenAI tools may play a crucial role in shaping perceptions, which potentially explain the observed gender differences in this study.
There was no significant gender difference in how students perceived their interaction with AI bots. This similarity could be attributed to the fact that both male and female students likely use comparable prompts when engaging with these bots. These prompts are often sourced from widely shared online resources, suggesting a standardized approach to bot interaction across genders. Additionally, AI bots are designed to provide consistent feedback across users, which may contribute to the uniform perception of interaction among students of different genders [
30].
The research findings showed that the degree variable affected only the perception of interaction of higher education students, where the mean value of interaction was significantly different between B.A. and Ph.D. students in favor of Ph.D. students. This significant difference could indicate that Ph.D. students have richer means of interaction with AI bots. This is especially true as follow-up interactions are needed when learning with GenAI bots [
31]. In addition, the results show similar perceptions of AI bots regarding their efficiency and affect, in addition to similar intention to use them in students’ learning [
32].
The research findings showed that the medium-technology-knowledge and high-technology-knowledge students differed significantly in their perceptions of working with AI tools in the interaction component only, where this difference was in favor of the high-technology-knowledge students. Here too, the findings indicate that higher education students of the two technology knowledge levels perceived similarly the efficiency and affect related to GenAI bots, in addition to similar intention to use these GenAI bots. The significant difference in the perception of interaction indicates that high-technology-knowledge students have richer means of interaction with the GenAI bots. This aligns with Rodrigues et al. [
33], who say that students’ technological skills are crucial to their personal, social, and professional futures, as well as to the relationships between students, teachers, and institutions.
The research findings showed that AI knowledge significantly affected three perception components (efficiency, interaction, and affect) of higher education students, where multiple comparisons found that the mean value of each of the three components was significantly higher in favor of high-AI-knowledge students over low-AI-knowledge students, as well as in favor of medium-AI-knowledge students over low-AI-knowledge students. Thus, when you are a low-AI-knowledge student, you do not perceive the efficiency, interaction, and affect related to GenAI bots similar to a medium- or a high-AI-knowledge student. Getting more experience in working with GenAi bots can increase your perception of the efficiency, interaction, and affect related to GenAi bots. Rodrigues et al. [
33] say that students need knowledge and skills to take advantage of the digital age. Thus, a low level of AI knowledge would negatively affect students’ perceptions of them. Moreover, the previous results are in line with studies that highlight students’ ability as needed in educational settings to achieve the learning goals (ex., [
34]).
The qualitative results enabled the investigation of specific incidences of higher education students’ perceptions related to the use of GenAi in their learning. These incidences showed the reasons behind students’ perceptions. For example, students feel comfortable because they perceive GenAi bots as helpful in one way or another. They feel enthusiastic to work with GenAi bots because they perceive their ability not to complain when you ask them several questions on the same topic. Moreover, the students addressed different aspects of affect in learning by talking about issues related to learning emotions, attitudes, beliefs, motivation, and values, which agrees with previous studies that showed students’ involvement with the different aspects of learning with technology [
35,
36,
37].
5. Conclusions, Recommendations, and Limitations
The present research intended to study students’ perceptions of GenAI tools for learning, where these perceptions included four components: students’ efficiency, interaction, affect, and intention. The research findings showed that the mean of affect, interaction, and efficiency was significantly medium, while the mean of intention score was significantly high. Together, these findings show that there is room to increase students’ affect, interaction, and efficiency. This increase could be obtained through different means. For example, instructors can increase them by discussing with the students their utilization of GenAI tools, so the students develop their skills in how to utilize those tools effectively and efficiently. This utilization is expected to increase their perceptions of the GenAI tools.
The research findings also showed that each background variable affected part of the components (efficiency, affect, and intention), so we need to take these background variables into consideration when planning the use of GenAI tools in educational settings. The present research was not interested in the age of students as a background variable, so future research is requested to find how this variable affects students’ perceptions of GenAI tools for their learning.
A potential limitation of this study is the gender imbalance among participants, with female students outnumbering male students by nearly 2:1. While we have provided an explanation for this disparity, future research should strive for an equal gender representation to enhance validity.
Although overall saturation was achieved, the qualitative component of this study is limited by the small sample size from each academic discipline. Future research should focus on achieving saturation within each specific discipline when examining higher education students’ perceptions of GenAI tools, which will provide more robust discipline-specific insights. In addition, future research can utilize focus group discussions as another qualitative collecting tool. This utilization will enrich the validity of results through the critical discussion in the groups [
38].
To conclude, future studies should investigate GenAI perceptions among specific sub-populations, defined by individual background variables and their intersections (e.g., female higher education students in humanities). This approach would yield more nuanced, population-specific findings, providing a stronger foundation for understanding students’ perceptions of GenAI tools within these distinct groups.
The qualitative data revealed themes, such as motivation, values, beliefs, and attitudes in the affect category. The theoretical framework we adopted did not explicitly address all of these categories. Future research is needed to incorporate these emergent themes into a new questionnaire, enhancing the measurement of students’ perceptions of GenAI tools in university learning.
Author Contributions
Conceptualization, W.D. and A.H.; methodology, W.D.; formal analysis, W.D.; data curation, W.D. and A.H.; writing—original draft preparation, W.D. and A.H.; writing—review and editing, W.D. All authors have read and agreed to the published version of the manuscript.
Funding
This research received no external funding.
Institutional Review Board Statement
The study was conducted in accordance with the Declaration of Helsinki and approved by the Institutional Ethics Committee of Al-Qasemi Academic College of Education (protocol code QSM.15.03.24).
Informed Consent Statement
Informed consent was obtained from all subjects involved in the study.
Data Availability Statement
The data are available upon request from the corresponding author.
Conflicts of Interest
The authors declare no conflicts of interest.
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Table 1.
The quantitative sample frequency in terms of gender and education stage.
| Education Stage | Total |
---|
B.A. | M.A. | Ph.D. |
---|
gender | male | 20 | 16 | 9 | 45 |
female | 46 | 30 | 32 | 108 |
Total | 66 | 46 | 41 | 153 |
Table 2.
Distribution of gender across disciplines.
| Gender | Total |
---|
Male | Female |
---|
Specialty | Humanistic discipline | 19 | 70 | 89 |
Scientific discipline | 26 | 38 | 64 |
Total | 45 | 108 | 153 |
Table 3.
The interviewees’ characteristics.
Participant | Age | Education Stage | Discipline |
---|
Salam | 21 | B.A. | Scientific |
Amir | 20 | B.A. | Humanistic |
Ali | 22 | B.A. | Humanistic |
Walid | 22 | B.A. | Scientific |
Amira | 26 | M.A. | Scientific |
Samira | 28 | M.A. | Humanistic |
Sami | 30 | M.A. | Humanistic |
Alaa | 30 | Ph.D. | Scientific |
Samar | 40 | Ph.D. | Scientific |
Sana | 45 | Ph.D. | Humanistic |
Table 4.
Means, standard deviations, and one-sample t-test.
| M | SD | t | p | 95% CI | |
---|
Low | High |
---|
Efficiency | 3.194 | 0.611 | 17.510 | 0.000 | 0.767 | 0.962 |
Interaction | 3.301 | 0.610 | 19.685 | 0.000 | 0.873 | 1.068 |
Affect | 3.521 | 0.639 | 23.071 | 0.000 | 1.089 | 1.293 |
Intention | 3.850 | 1.005 | 18.703 | 0.000 | 1.360 | 1.680 |
Table 5.
Independent sample t-test for differences due to gender (number of males = 45, number of females = 108).
| Gender | M | SD | t | p | 95% CI |
---|
Low | High |
---|
Efficiency | male | 3.3611 | 0.58401 | 2.207 | 0.014 | 0.025 | 0.448 |
female | 3.1250 | 0.61070 | | |
Interaction | male | 3.4056 | 0.61304 | 1.337 | 0.085 | −0.065 | 0.362 |
female | 3.2569 | 0.60610 | | |
Affect | male | 3.6698 | 0.54298 | 1.876 | 0.031 | −0.011 | 0.433 |
female | 3.4590 | 0.66694 | | |
Intention | male | 3.6963 | 0.73794 | 1.746 | 0.041 | −0.032 | 0.524 |
female | 3.4506 | 0.81435 | | |
Table 6.
Differences due to degree (number of B.A. students = 66, number of M.A. students = 46, number of Ph.D. students = 41).
| | | 95% CI | F | p |
---|
Efficiency | B.A. | 3.125 | 0.643 | 2.967–3.283 | 1.754 | 0.177 |
M.A. | 3.160 | 0.5996 | 2.982–3.338 |
Ph.D. | 3.345 | 0.555 | 3.169–3.520 |
Interaction | B.A. | 3.119 | 0.652 | 2.959–3.280 | 5.883 | 0.003 |
M.A. | 3.383 | 0.5752 | 3.212–3.554 |
Ph.D. | 3.500 | 0.498 | 3.343–3.657 |
Affect | B.A. | 3.394 | 0.6868 | 3.225–3.563 | 2.570 | 0.080 |
M.A. | 3.575 | 0.6428 | 3.384–3.765 |
Ph.D. | 3.666 | 0.5167 | 3.502–3.829 |
Intention | B.A. | 3.444 | 0.864 | 3.232–3.657 | 0.735 | 0.481 |
M.A. | 3.630 | 0.777 | 3.340–3.861 |
Ph.D. | 3.529 | 0.711 | 3.304–3.753 |
Table 7.
Differences due to technology knowledge (number of students with medium technology knowledge = 65, number of students with high technology knowledge = 81).
| Level of Technology Knowledge | M | SD | t | p | 95% CI |
---|
Low | High |
---|
Efficiency | Medium | 3.156 | 0.572 | −1.154 | 0.250 | −0.314 | 0.083 |
High | 3.272 | 0.627 |
Interaction | Medium | 3.200 | 0.608 | −2.440 | 0.016 | −0.434 | −0.044 |
High | 3.440 | 0.575 |
Affect | Medium | 3.475 | 0.574 | −1.773 | 0.078 | −0.369 | −0.020 |
High | 3.649 | 0.603 |
Intention | Medium | 3.523 | 0.837 | −0.318 | 0.751 | −0.294 | 0.213 |
High | 3.564 | 0.710 |
Table 8.
Differences due to AI knowledge (number of low-AI-knowledge students = 42, number of medium-AI-knowledge students = 91, number of high-AI-knowledge students = 20).
| M | SD | 95% Confidence Interval for Mean | F | p |
---|
Lower | Upper |
---|
Efficiency | Low | 2.824 | 0.679 | 2.613 | 3.036 | 13.144 | <0.001 |
Medium | 3.302 | 0.535 | 3.191 | 3.414 |
High | 3.481 | 0.435 | 3.278 | 3.685 |
Interaction | Low | 2.893 | 0.529 | 2.728 | 3.058 | 16.668 | <0.001 |
Medium | 3.419 | 0.587 | 3.297 | 3.541 |
High | 3.619 | 0.447 | 3.410 | 3.828 |
Affect | Low | 3.099 | 0.700 | 2.88 | 3.317 | 17.086 | <0.001 |
Medium | 3.633 | 0.536 | 3.52 | 3.744 |
High | 3.900 | 0.489 | 3.67 | 4.129 |
Intention | Low | 3.492 | 0.817 | 3.237 | 3.747 | 0.047 | 0.954 |
Medium | 3.531 | 0.810 | 3.362 | 3.700 |
High | 3.550 | 0.736 | 3.206 | 3.894 |
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