MEDIATING EFFECT OF ARTIFICIAL INTELLIGENCE TOOLS ON THE LINK BETWEEN PERFORMANCE-BASED ASSESSMENT TASKS DIFFICULTY AND TRAINEES’ INNOVATION SKILL DEVELOPMENT IN SELECTED TECHNICAL INSTITUTIONS, KENYA

James Ngeti Musyimi, John Mugun Boit, Anne Syomwene

Abstract


The fundamental purpose of this study was to assess the mediating effect of Artificial Intelligence (AI) technology tools on the link between Performance-Based Assessment (PBA) tasks’ difficulty and innovation skill development among Information and Communication Technology (ICT) diploma trainees in selected technical institutions in Kenya. Guided by Vygotsky’s Social Constructivism theory, the research employed a convergent parallel mixed-methods design. A sample of 346 trainees was drawn from a target population of 2,247 Module III ICT diploma trainees. Quantitative data were collected using an ICT Diploma Trainees’ Questionnaire (IDTQ), while qualitative data were obtained through Focus Group Discussions (FGDs). The questionnaire’s reliability was established using Cronbach’s alpha for internal consistency, and its face and content validity were confirmed through expert judgment. Trustworthiness of qualitative findings was enhanced through member checking, while triangulation ensured confirmability. Quantitative data were analysed using descriptive statistics and linear regression-based mediation analysis, whereas qualitative data were analysed through thematic analysis. Integration of findings was achieved using a side-by-side comparison approach. The study found that the use of AI technology tools partially mediated the relationship between PBA task difficulty and innovation skill development (β = 0.041, BootLLCI = 0.009, BootULCI = 0.082). Qualitative findings indicated that difficult PBA tasks encouraged repetition, exploration and experimentation. However, the transition of this to innovation skill development was dependent on the availability of adequate support, including but not limited to relevant AI technology tools. The study concluded that the effectiveness of innovation skill development is not merely a function of the usage of supporting AI tools but also the task difficulty itself. The study recommends that technical institutions offering ICT diploma courses should establish structured AI-enabled support applications so that trainees can effectively engage with cognitively demanding PBA tasks.

Keywords


artificial intelligence, innovation skills, tasks difficulty, performance-based assessment, ICT diploma

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References


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DOI: http://dx.doi.org/10.46827/ejes.v13i3.6578

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