Submitted:
17 May 2025
Posted:
19 May 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
1.1. Objectives
- H1: Effective metacognitive strategies are positively associated with the acceptance and perceived usefulness and value of LLMs as learning tools.
- H2: Effective metacognitive strategies are negatively related to academic burnout, such that an increased use of these strategies is associated with lower levels of cognitive and emotional depletion.
- H3. The perceived usefulness of LLMs as effective learning aids—by reducing cognitive and emotional workload—increases with higher levels of academic burnout.
- H4: Academic burnout mediates the relationship between effective metacognitive strategies and LLM acceptance, such that the stress-reducing benefits of metacognitive strategies are expected to indirectly promote a more favorable acceptance of LLMs.
1.2. Related Works
2. Methodology
2.1. Procedures and Participants
2.2. Instruments
2.3. Data Analysis
2.4. GenAI Usage Statement
3. Results
4. Discussion
4.1. Rationalizing Predictive Paths and Mediating Effects
4.2. Reflections for Educational Practice
4.3. So What if ChatGPT Taught It?
5. Conclusion
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| ABM-4 (hanging from totally agree to totally disagree) | Scoring Method |
| I never feel able to achieve my academic goals. | Sum (+) |
| I have trouble relaxing after school. | Sum (+) |
| I get exhausted when I have to go to college. | Sum (+) |
| The demands of my course make me emotionally tired. | Sum (+) |
| LS/LLMs-6 (hanging from never to always) | Scoring Method |
| I use LLMs (ChatGPT, Bard, etc.) to clarify doubts and fill gaps in my knowledge about programming. | Sum (+) |
| I use LLMs (ChatGPT, Bard, etc.) to formulate and solve programming activities. | Sum (+) |
| I correct my codes using LLMs (ChatGPT, Bard etc.). | Sum (+) |
| I only start studying at the last minute. | Subtract (−) |
| I have difficulty finding errors in responses and codes generated by LLMs (ChatGPT, Bard etc.). | Subtract (−) |
| I feel like I’m just memorizing information instead of really understanding the contents. | Subtract (−) |
| TAME/LLMs-5 (hanging from totally agree to totally disagree) | Scoring Method |
| LLMs (ChatGPT, Bard etc.) make programming more democratic and accessible for people. | Sum (+) |
| I believe that LLMs (ChatGPT, Bard etc.) can be better explored by teachers in classes, | Sum (+) |
| I feel confident with the texts and/or codes generated by LLMs (ChatGPT, Bard etc.). | Sum (+) |
| I think LLMs (ChatGPT, Bard etc.) are very efficient in programming. | Sum (+) |
| I prefer programming without the help of LLMs | Reversed (+ 8 − Item) |
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