Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/122897
Title: Students' preferences with university teaching practices: analysis of testimonials with artificial intelligence
Authors: Álvarez Álvarez,Carmen 
Falcón Pulido, Samuel 
UNESCO Clasification: 580107 Métodos pedagógicos
630707 Tecnología y cambio social
Keywords: Teaching practices
Teaching quality
Satisfaction
Higher education
Artificial intelligence
Issue Date: 2023
Journal: Educational Technology Research and Development 
Abstract: University teaching practices impact student interest, engagement, and academic performance. This paper presents a study that uses artificial intelligence (AI) to examine students’ preferences for university teaching practices. We asked students in various fields open-ended questions about the best teaching practices they had experienced. Due to the large amount of data obtained, we used the AI-based language model Generative Pretrained Transformer-3 (GPT-3) to analyse the responses. With this model, we sorted students’ testimonies into nine theory-based categories regarding teaching practices. After analysing the reliability of the classifications conducted by GPT-3, we found that the agreement between humans was similar to that observed between humans and the AI model, which supported its reliability. Regarding students’ preferences for teaching practices, the results showed that students prefer practices that focus on (1) clarity and (2) interaction and relationships. These results enable the use of AI-based tools that facilitate the analysis of large amounts of information collected through open methods. At the didactic level, students’ preferences and demand for clear teaching practices (in which ideas and activities are stated and shown without ambiguity) that are based on interaction and relationships (between teachers and students and among students themselves) are demonstrable.
URI: http://hdl.handle.net/10553/122897
ISSN: 1556-6501
DOI: 10.1007/s11423-023-10239-8
Source: Educational Technology Research and Development [1556-6501], (2023)
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