Adoption of Artificial Intelligence in Schools: Unveiling Factors Influencing Teachers Engagement

04/03/2023
by   Mutlu Cukurova, et al.
0

Albeit existing evidence about the impact of AI-based adaptive learning platforms, their scaled adoption in schools is slow at best. In addition, AI tools adopted in schools may not always be the considered and studied products of the research community. Therefore, there have been increasing concerns about identifying factors influencing adoption, and studying the extent to which these factors can be used to predict teachers engagement with adaptive learning platforms. To address this, we developed a reliable instrument to measure more holistic factors influencing teachers adoption of adaptive learning platforms in schools. In addition, we present the results of its implementation with school teachers (n=792) sampled from a large country-level population and use this data to predict teachers real-world engagement with the adaptive learning platform in schools. Our results show that although teachers knowledge, confidence and product quality are all important factors, they are not necessarily the only, may not even be the most important factors influencing the teachers engagement with AI platforms in schools. Not generating any additional workload, in-creasing teacher ownership and trust, generating support mechanisms for help, and assuring that ethical issues are minimised, are also essential for the adoption of AI in schools and may predict teachers engagement with the platform better. We conclude the paper with a discussion on the value of factors identified to increase the real-world adoption and effectiveness of adaptive learning platforms by increasing the dimensions of variability in prediction models and decreasing the implementation variability in practice.

READ FULL TEXT
research
04/15/2022

Identifying Ethical Issues in AI Partners in Human-AI Co-Creation

Human-AI co-creativity involves humans and AI collaborating on a shared ...
research
11/16/2021

Will We Trust What We Don't Understand? Impact of Model Interpretability and Outcome Feedback on Trust in AI

Despite AI's superhuman performance in a variety of domains, humans are ...
research
12/31/2021

Towards the global vision of engagement of Generation Z at the workplace: Mathematical modeling

Correlation and cluster analyses (k-Means, Gaussian Mixture Models) were...
research
08/22/2021

Designing Mobile Health for User Engagement: The Importance of Socio-Technical Approach

Despite the significance of user engagement for efficacy of mobile healt...
research
04/17/2020

Towards an Interoperable Ecosystem of AI and LT Platforms: A Roadmap for the Implementation of Different Levels of Interoperability

With regard to the wider area of AI/LT platform interoperability, we con...
research
10/13/2020

A Systematic Review on Online Exams Solutions in E-learning: Techniques, Tools, and Global Adoption

E-learning in higher education is exponentially increased during the pas...
research
06/18/2021

Multi-Task Learning for User Engagement and Adoption in Live Video Streaming Events

Nowadays, live video streaming events have become a mainstay in viewer's...

Please sign up or login with your details

Forgot password? Click here to reset