Abstract
The current data science education requires educators to provide more personally meaningful and culturally relevant data science learning experiences. By incorporating art production, we designed a data-art inquiry program to teach students data science basics and enable them to use art techniques to visualize their data. To understand how students established connections between data and art, we employed epistemic network analysis (ENA) at two levels to explore how they combine their data practices and art processes. Our study had three primary findings: (1) students have a personalized way of combining data and art; (2) data collection appears to be a key practice in our data-art inquiry program; (3) art production empowers students to better understand and communicate their data. In the future design of a data-art inquiry program, we suggest programming might (1) encourage students to explore personalized art formats to present their data, (2) emphasize the role of data collection, and (3) provide sufficient space and time for art processes to ensure the connections between data and artwork.
Original language | English (US) |
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Journal | Journal of Science Education and Technology |
Early online date | Nov 4 2024 |
DOIs | |
State | E-pub ahead of print - Nov 4 2024 |
Externally published | Yes |
Keywords
- Arts education
- Data science education
- Data-art inquiry
- ENA
ASJC Scopus subject areas
- Education
- General Engineering