Findings on Teaching Machine Learning in High School: A Ten-Year Systematic Literature Review Cover Image

Findings on Teaching Machine Learning in High School: A Ten-Year Systematic Literature Review
Findings on Teaching Machine Learning in High School: A Ten-Year Systematic Literature Review

Author(s): Ramon Mayor Martins, Christiane Gresse von Wangenheim
Subject(s): School education, ICT Information and Communications Technologies, Pedagogy
Published by: Vilniaus Universiteto Leidykla
Keywords: machine learning; content; pedagogy; technology; High School; K-12;

Summary/Abstract: Machine Learning (ML) is becoming increasingly present in our lives. Thus, it is important to introduce ML already in High School, enabling young people to become conscious users and creators of intelligent solutions. Yet, as typically ML is taught only in higher education, there is still a lack of knowledge on how to properly teach younger students. Therefore, in this systematic literature review, we analyze findings on teaching ML in High School with regard to content, pedagogical strategy, and technology. Results show that High School students were able to understand and apply basic ML concepts, algorithms and tasks. Pedagogical strategies focusing on active problem/project-based hands-on approaches were successful in engaging students and demonstrated positive learning effects. Visual as well as text-based programming environments supported students to build ML models in an effective way. Yet, the review also identified the need for more rigorous evaluations on how to teach ML.

  • Issue Year: 22/2023
  • Issue No: 3
  • Page Range: 421-440
  • Page Count: 20
  • Language: English