A K-means Clustering Analysis to Assess Educators' and Students' Perceptions of Digital Technology in Higher Education
DOI:
https://doi.org/10.56919/usci.2544.001Keywords:
Digital Technology Integration, K-Means Clustering, Digital Technology Perception, Digital TransformationAbstract
Digital technology has transformed the way teaching and learning are approached, shifting from a teacher-centered model to a student-centered one. Educators and students are the key stakeholders driving the integration of digital technology into educational processes. Many studies have examined educators' and students' perceptions of digital technology use through descriptive analyses. However, descriptive analysis cannot uncover complex non-linear relationships between the main explanatory variables. It also depends on domain experts to identify important features for investigating the phenomenon. Therefore, a detailed examination of faculty and student perceptions of digital technology in education is necessary, and machine learning offers powerful tools, such as advanced algorithms, to better detect patterns in data. This study gathers data from educators and students at Nigerian higher education institutions through questionnaires. The data is analyzed using the K-means clustering algorithm to identify trends in perceptions of digital technology use in teaching and learning. The results show three groups among educators: laggards, adorers, and adopters, representing low, moderate, and high levels of integration and perception, respectively. Student perceptions of digital technology integration follow a similar pattern but with greater variability. Findings suggest the need for sufficient digital technology resources in higher education and for strategies to support educators and students with low perceived benefit and low integration of digital technologies in academic activities, especially by integrating professional development training for educators into pedagogy.
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