Sustainable Curriculum Planning for Artificial Intelligence Education: A Self-Determination Theory Perspective
Abstract
:1. Introduction
2. Theoretical Frameworks
2.1. Self-determination Theory (SDT)
2.2. Four Curriculum Planning Approaches
2.3. AI Teaching and Learning in Schools
3. This Study
- RQ1:
- How do the three psychological needs—autonomy, competence and relatedness—in SDT relate to curriculum development?
- RQ2:
- How do curriculum planning approaches relate to curriculum development?
4. Method
4.1. Participants and Data Collection
- How to prepare new teachers to design and teach AI curricula (see the three needs in SDT).
- How to plan and develop the AI curriculum and its content (content and product approaches).
- Logistical issues within a school environment (e.g., timetable and facility activities) (see relatedness in SDT).
- Teaching strategies and learning design (process and praxis approaches).
- How to refine the curriculum in an iterative manner (see the four approaches).
4.2. Data Analysis
- Phase 1: becoming familiar with the data and generating initial codes. A team member (the first expert) read, re-read line by line and annotated transcripts with codes that described notable content.
- Phase 2: searching for themes. A different team member (the second expert) reviewed all annotated transcripts to thoroughly examine codes and to identify any differences in interpretations. Another team member (the first author) acted as the mediator of any differences in interpretation. The team analyzed the codes to generate initial themes.
- Phase 3: reviewing themes. The team may group some existing themes together or split some themes into subthemes. This process was repeated until the researchers were satisfied with the thematic map.
- Phase 4: defining and naming themes. The team defined and gave names that provided a full sense of the theme and its importance.
5. Result, Discussion and Conclusions
5.1. Empirical Implications
5.1.1. Theme 1: Contextual Factors
- “Our smart phones use AI technologies, they are everywhere. Our students must master the technologies” (non-AI teacher 1).
- “Yes, I definitely think there would be a demand, … AI knowledge is very important for our students’ careers and lives. They need to learn more about AI. I am interested to know more” (non-AI teacher 3).
- “Our students need to learn the AI technologies for their future. It is one of our jobs in schools” (AI teacher 6).
- “It is our responsibility to teach students the technologies for their future” (AI teacher 8).
- “I need to receive professional development programs to learn more about AI before I design and teach the topic…. I don’t think I am capable of teaching this topic” (non-AI teacher 5).
- “The concepts of AI are unclear for me. I would like to know more. Sometimes, I was not sure if I explain the (AI) knowledge to my student well in the classrooms” (non-AI teacher 7).
- “There are so many different tools for learning AI. I would like to receive the relevant workshops. I did not feel comfortable to design and teach my lessons with the tools... I wanted to know more about how to design an appropriate curriculum” (AI teacher 6).
- “I am not confident to teach AI topics. … I need to learn more about AI and their applications” (AI teacher 7).
- “I believe I need to learn more about AI from other school teachers before I design and teach the topic” (non-AI teacher 2).
- “I hope to attend more workshops run by XXX (AI industry)” (AI teacher 2).
- “University professors could give us a talk” (AI teacher 3).
- “I attended a few lectures given by a mathematics professor and an AI professor. The lectures helped me a lot” (AI teacher 9).
- “My boss should know what is going with the curriculum development” (AI teacher 4).
- “I believe that engaging my principal in the development would make the job easier” (AI teacher 6).
- “We need the support from our panel and principal to design and deliver the curriculum” (AI teacher 9).
- “I want to learn more about how to design AI curricula. Perhaps some sharing from other colleagues” (non-AI Teacher 1).
- “Definitely, I need more training on this topic and its pedagogy run by school teachers” (AI teacher 3).
- “I was a member of a Whatsapp group with other school teachers. They shared the latest AI tools and teaching ideas” (AI teacher 5).
- “Professors could give us some advice” (non-AI teacher 3).
- “I hope to attend AI tools workshops run by XXX (AI industry)” (AI teacher 2).
- “It would be better to have longer lessons to teach the AI units” (AI teacher 3).
- “In my school timetable, the technology subject only has one period (around 40 min). How could I do project-based learning?” (AI teacher 8).
- “I need more funds to purchase or subscribe to the services or tools for AI teaching and learning” (AI teacher 9).
- “Some other schools have the 50 sets of robots for a class; my school only has 5 sets for my class. My students would have less hands-on experience” (AI teacher 10).
5.1.2. Theme 2: Curriculum Design
- “AI is not an independent subject, but a teaching unit under the technology key learning area” (AI teacher 1).
- “In my school, we would carefully plan and assimilate the AI teaching units into the other technology subjects” (AI teacher 7).
- “No problems with the assessment, it was as same as computer literacy” (AI teacher 9).
- “I first used the curriculum guide to identify the content and assessment” (AI teacher 1, content and product first).
- “Content development is my first task” (AI teacher 4, content and product first).
- “Students should know the background and history of the AI technologies” (AI teacher 4, knowledge in AI).
- “Students should learn about how the computer develops the ability, which includes modeling, statistics and learning algorithms. They also should learn how AI technologies process data in different aspects” (AI teacher 5, process in AI).
- “I believe my students should learn about the societal and personal impact of AI locally and globally” (AI teacher 8, impact of AI).
- “My students should consider ethical issues from different perspectives of stakeholders, including developers, policy makers and users. They should not only explore ethical issues from different perspectives, but also develop principles for the ethical design and deployment of AI-based technologies” (AI teacher 10, impact of AI).
- “In my school, the test and examination of computer literacy assessed student knowledge of AI” (AI teacher 2, assessment of AI).
- “My students found the technical aspect too difficult and unfamiliar to understand” (AI teacher 1).
- “I need to spend a lot of time and effort to teach my student the AI terms” (AI teacher 3).
- “Is there any difference between deep learning and machine learning for school students?” (AI teacher 4).
- “I found many terms so abstract in AI and needed to suggest new ways to explain them to my students” (AI teacher 10).
- “I used diagrams to explain what machine learning is” (AI teacher 2).
- “I communicated with my students using the term IPO (input–process–output—common terminologies)” (AI teacher 9).
- “I found many terms so abstract in AI and needed to suggest new ways to explain them to my students” (AI teacher 10).
- “I used KKBox (local and teenagers) instead of Spotify (global or adult) as an example to teach” (AI teacher 7).
- “Smart light (local and current issues) is the topic I used for my student inquiry task” (AI teacher 8).
- “My students experienced AI using their own experience and body movements” (AI teacher 9).
- “I used Hong Kong examples to teach AI” (AI teacher 10).
- “I first identified the appropriate content and developed the slides. … Then I worked with my students to set their project title” (AI teacher 2).
- “My students used design thinking to develop an AI app to serve people. They set their learning goals (self-directed learning) for their learning” (AI teacher 5).
- “They created a smart (AI) home model proposal for their parents” (AI teacher 6).
- “Similar to coding, I planned to use project-based learning” (AI teacher 10).
- “My students fear AI technologies” (AI teacher 2).
- “My students found AI scary (the end of the world), I use positive attitude to talk about AI now” (AI teacher 5).
- “My students had negative attitudes toward AI technologies” (AI teacher 9).
- “I need to improve my teaching skills and update the content in cycles” (AI teacher 1).
- “There is no way that I will not revise the teaching materials. I have a lot to improve” (AI teacher 3).
- “We need to update the content as AI technologies are change rapidly” (AI teacher 4).
- “The teaching units must be explicitly designed for a specific goal (module) and be independent” (AI teacher 5).
- “Module-based curricula should be adopted. Easier to choose the unit for teaching and revising” (AI teacher 7).
5.2. Theoretical Contributions
5.2.1. Self-determination Theory
5.2.2. Curriculum Learning Approaches
5.3. Practical Recommendations
6. Limitations and Future Directions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
- How to prepare new teachers to design and teach AI curriculum.
- What do you need to design and teach new AI curricula?
- What factors do motivate you to prepare the AI curriculum planning?
- Do you think you are capable of doing it? Why?
- Do you want to work with school leaders and other school teachers?
- What other support do you need or expect?
- How to plan and develop the AI curriculum and its content.
- How did/would you start the AI curriculum planning and teaching?
- How do you design the content and assessment?
- Which topics do you think are the most important for your students to know?
- Can you show me your work and explain?
- Logistical issues within a school environment.
- How did the school support you/what support did you expect from schools?
- Are there any logistical issues you have or expect for your curriculum planning and teaching?
- Do you need financial support when designing and teaching the curriculum?
- Teaching strategies and learning design.
- How did/will you teach the curriculum?
- What instructional approaches did you use in teaching AI curricula?
- What are the best learning approaches for students?
- How to refine the curriculum in an iterative manner.
- How did/would you improve the curriculum?
- Do you expect some help from outside?
- What are the characteristics of the curriculum?
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Chiu, T.K.F.; Chai, C.-s. Sustainable Curriculum Planning for Artificial Intelligence Education: A Self-Determination Theory Perspective. Sustainability 2020, 12, 5568. https://doi.org/10.3390/su12145568
Chiu TKF, Chai C-s. Sustainable Curriculum Planning for Artificial Intelligence Education: A Self-Determination Theory Perspective. Sustainability. 2020; 12(14):5568. https://doi.org/10.3390/su12145568
Chicago/Turabian StyleChiu, Thomas K.F., and Ching-sing Chai. 2020. "Sustainable Curriculum Planning for Artificial Intelligence Education: A Self-Determination Theory Perspective" Sustainability 12, no. 14: 5568. https://doi.org/10.3390/su12145568
APA StyleChiu, T. K. F., & Chai, C.-s. (2020). Sustainable Curriculum Planning for Artificial Intelligence Education: A Self-Determination Theory Perspective. Sustainability, 12(14), 5568. https://doi.org/10.3390/su12145568