Beyond the Numbers: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy
Abstract
1. Introduction
- How do MOE teachers perceive data literacy and its relevance to their professional roles?
- What types of professional learning experiences have shaped teachers’ understanding of data use?
- What challenges do teachers face in developing and applying data literacy?
- What support structures or systemic changes do teachers believe are necessary to sustain growth in this area?
2. Literature Review
2.1. What Is DL?
2.2. Affective Dimensions: Self-Efficacy (SE), Perceived Value of Data Use (PVOD)
2.2.1. SE of Data Literacy in Teachers
2.2.2. Teachers’ PVOD
2.3. Barriers to Implementation
2.4. Global Policy/Practice Perspectives
2.5. Need for Qualitative Inquiry in Singapore
3. Research Methods
3.1. Participants
3.2. Study Design
3.3. Instruments & Measures
3.4. Data Analysis
4. Results
4.1. Perceptions of Data Literacy and Its Relevance to Teaching
4.2. Professional Learning Experiences That Shaped Data Use
4.3. Challenges in Developing and Applying Data Literacy
4.4. Desired Support Structures for Sustaining Data Literacy
5. Discussion
5.1. Teachers’ Beliefs: Willing but Wary
5.2. Professional Learning and Data Literacy Development
5.3. Systemic Barriers to Teachers’ Data Use in Singapore’s Policy-Driven Context
5.4. Support Structures and Systemic Changes Needed
5.5. Implications for Practice and Policy
5.5.1. Strengthen Professional Development for Teachers
5.5.2. Empower School Leaders to Model Inquiry and Support
5.5.3. Align National Policies with a Learning-Driven Data Culture
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Study Title | Beyond the Number: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy | |
| Research Method | Reflective Thematic Analyses | |
| Stage of Research | Rationale and Decisions | |
| Research Design | Research questions:
| Qualitative research design to explore MOE teachers’ experiences, beliefs, and challenges in developing and applying DL in their teaching. After attending a PD session on DL, participants were invited for an interview. The interview phase served as a follow-up, allowing researchers to probe deeper into the patterns observed in the quantitative data and to surface rich contextual insights not captured in the survey. |
| Sampling strategy | Purposive sampling of MOE teachers who participated in PD to understand teachers’ lived experiences and beliefs about DL. | |
| Sampling criteria | Sampling ensured diversity in teaching experience (ranging from 3 to 33 years), age (21 to 60 years), and subject specialization, including Science, Humanities, Language, and Mathematics. | |
| Data Collection | Recruitment | Interview participants were selected from the broader survey cohort using maximum variation sampling, prioritizing teachers who had completed the PD session, ensuring that interviewees could reflect on both survey items and their PD experience. |
| Data collection process | Semi-structured interview protocol was developed by the research team to investigate teachers’ perceptions of DL, their professional learning experiences, challenges encountered in using data, and the kinds of support they deemed necessary. Each online interview lasted about 40–60 min. | |
| Reflective notes | Focused on data adequacy to ensure rich and diverse perspectives were obtained. | |
| Data Analyses | Transcription | Interviews were recorded with consent and transcribed verbatim. |
| Coding process | NVivo was used to support the organization and development of codes. Initial codes were generated inductively from the transcripts, and emerging codes and themes were iteratively reviewed and refined | |
| Theme development | Braun and Clarke’s (2006) six-phase framework. An inductive approach guided the identification of recurring patterns and themes, which were iteratively refined through coding and memo writing. | |
| Verification | NVivo 12 was used to organize data, support thematic mapping, and facilitate cross-case comparison. Themes were iteratively reviewed and refined in consultation with the research team. These discussions provided opportunities for peer debriefing and validation, ensuring that the analysis was not shaped solely by the first author’s perspective. | |
| Research Questions | Sample Interview Questions |
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| Data | Codes | Theme |
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| I think it was quite useful to have that group discussion to look at the data and talk about it. Because otherwise, I’ll be looking at it on my own and I won’t know what I’m supposed to look out for. | Group discussion | Interactive and Collaborative Learning |
| Hands-on works very well. Lecture-based, a bit less. Let’s say giving scenarios and asking teachers what’s the best way of analyzing the data. That was pretty good. | Hands-on tasks | |
| Yes. Yes. Yeah. The teachers were engaged, right? We have to bring it down for the teachers to understand what is happening. I guess it has to be relatable. So case studies based on the great profile of students giving hypothetical scenarios, they work well, but I’m not sure what longer lasting impacts of this professional development, probably there will need to be a follow-up. | Real-life case studies Scenario-based exercises Real-life case studies | |
| So you tell us how to do this and then maybe give us some hands-on activity to try to use those tools. Like what you did during the session, you gave us that set of data, but we wish we could have it. Then we don’t have to type it into the computer and do our own analysis. So we need that hands-on thing. We need to do that practice and then figure out on our own, then find out from you, the experts, whether our interpretation is correct or wrong. What we missed out, that kind of thing would be helpful | Hands-on activity Reflective collaboratively | |
| okay actually the think discussion kind of thing like discussing with the group and listening to their perspective I think it is it is valuable to me yeah and then after that I think the professor actually got us to share our thoughts I think that is also good because then the sharing becomes rich and we learn more and what it’s just that the content downloading of the content was a bit too much for that day | Peer discussion Reflective collaboratively |
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Share and Cite
Khor, E.T.; Chee, A.; Lee, S.S. Beyond the Numbers: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy. Educ. Sci. 2025, 15, 1527. https://doi.org/10.3390/educsci15111527
Khor ET, Chee A, Lee SS. Beyond the Numbers: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy. Education Sciences. 2025; 15(11):1527. https://doi.org/10.3390/educsci15111527
Chicago/Turabian StyleKhor, Ean Teng, Amelia Chee, and Shu Shing Lee. 2025. "Beyond the Numbers: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy" Education Sciences 15, no. 11: 1527. https://doi.org/10.3390/educsci15111527
APA StyleKhor, E. T., Chee, A., & Lee, S. S. (2025). Beyond the Numbers: K-12 Teachers’ Experiences, Beliefs, and Challenges in Developing Data Literacy. Education Sciences, 15(11), 1527. https://doi.org/10.3390/educsci15111527

