Overdependence on AI Supported Learning and Critical Thinking: Investigating Opportunities and Risks in Modern Education at Higher Educational Level
DOI:
https://doi.org/10.63544/ijss.v5i2.263Keywords:
AI-Assisted Learning, Critical Thinking Skills, Cognitive Offloading, Overdependence, Higher Education, Educational TechnologyAbstract
This research examines how AI-based learning resources can help learners develop a critical thinking skill in the context of higher education, both as an opportunity and a potential danger of overreliance. This research is aimed at evaluating the role of AI based learning on critical thinking skills in students concerning the proportions of potential disadvantages and the positive effects of AI tools. The participants were separated into two groups, including those who used AI-supported learning tools and those who did not. The sample of the study was extracted using multistage sampling approach in which 150 students were randomly selected at first stage. At second stage these participants were divided in to two groups (75 in each group) using convenient sampling technique to identify students using AI too and student who did not use. The data were collected using a specially developed critical thinking test in multiple choice as well as performance-based formats, based on Watson-Glaser Critical Thinking Appraisal (WGCTA).
Descriptive statistics, paired t-tests, and independent t-tests were applied in order to compare the critical thinking scores of the two groups and determine the relationship between exploring AI tools and cognitive performance. These results showed that AI-tool users have improved critical thinking scores by a significant margin, 51.5 (SD = 6.3) to 68.0 (SD = 5.0) (t = 8.72, p < 0.05), and the control group did not significantly improve in critical thinking scores.
Nevertheless, risks of being over dependent on AI tools were also noted in the study as it was observed that students had to engage into frequent use of AI tools which led to cognitive offloading where students had to rely less on free-thinking to solve their independent problems. The correlation test (r = 0.56, p < 0.05) indicated that the excessive use of AI tools could result in a lack of critical thinking and the use of superficial method of learning. This explains why it is necessary to combine the introduction of AI tools with the classic teaching method to encourage critical thinking and metacognition. Other ethical concerns like fair access to AI devices and possible bias within the AI algorithms were also addressed, and a reasonable and conscious approach towards the use of AI in learning was highlighted.
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