Summary of the context and overall objective of the project
The HHAIR project aims to develop a new adaptive learning system to help young learners develop self-regulated learning skills. Self-regulated learning is a critical skill set that allows learners to monitor and control their own learning. This combination of cognitive and metacognitive skills starts to develop when learners are in primary education, and research consistently shows that most learners need help to properly develop and apply these skills. Self-regulated learning skills support acquiring and storing new knowledge and facilitate lifelong learning.
In this project, we work on an adaptive learning system that combines human and artificial intelligence so that young learners receive the “right” level of support to develop self-regulated learning skills. In the Netherlands, young learners often use adaptive learning technologies to learn arithmetic, mathematics, grammar, and spelling. Depending on the learners ' performance, these systems use an algorithm to select the right exercise or problem. In a similar way, HHAIR develops an algorithm to support learners in how to monitor and control their own learning. This algorithm will work on top of existing adaptive learning technologies already used in schools, such as Gynzy, through a newly developed data infrastructure.
Agency over your own learning process is an important element of self-regulated learning. Therefore, HHAIR aims to transfer agency from the adaptive learning technology to the learner as these self-regulated learning skills develop. This means that with the development of these skills, decisions that are first made by adaptive learning technology are later made by the learner. The first step in this transfer is for learners to become aware of how they are learning. In the HHAIR project, we will develop personalized visualizations in the so-called learning path app that show learners their learning trajectories over time. The combination of awareness of how the adaptive learning technology is regulating your learning and the development of your own skills is expected to allow young learners to develop these important self-regulated learning skills. In this way, the project aims to optimize learning and support future and lifelong learning.
This innovative and unique project proposes a hybrid intelligence approach for training self-regulated learning skills with AI. Hybrid intelligence aims to research and develop intelligent systems that augment rather than replace human intelligence. These systems are developed to leverage human strengths and compensate for human weaknesses with AI. The Hybrid Human-AI Regulation developed in this project aims to apply this notion in the context of human learning to support self-regulated learning.