Indexing Analytics to Instances: How Integrating a Dashboard can Support Design Education
- URL: http://arxiv.org/abs/2404.05417v1
- Date: Mon, 8 Apr 2024 11:33:58 GMT
- Title: Indexing Analytics to Instances: How Integrating a Dashboard can Support Design Education
- Authors: Ajit Jain, Andruid Kerne, Nic Lupfer, Gabriel Britain, Aaron Perrine, Yoonsuck Choe, John Keyser, Ruihong Huang, Jinsil Seo, Annie Sungkajun, Robert Lightfoot, Timothy McGuire,
- Abstract summary: We develop a research artifact integrating a design analytics dashboard with design instances, and the design environment that students use to create them.
We develop research implications addressing how AI-based design analytics can support instructors' assessment and feedback experiences in situated course contexts.
- Score: 14.45375751032367
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We investigate how to use AI-based analytics to support design education. The analytics at hand measure multiscale design, that is, students' use of space and scale to visually and conceptually organize their design work. With the goal of making the analytics intelligible to instructors, we developed a research artifact integrating a design analytics dashboard with design instances, and the design environment that students use to create them. We theorize about how Suchman's notion of mutual intelligibility requires contextualized investigation of AI in order to develop findings about how analytics work for people. We studied the research artifact in 5 situated course contexts, in 3 departments. A total of 236 students used the multiscale design environment. The 9 instructors who taught those students experienced the analytics via the new research artifact. We derive findings from a qualitative analysis of interviews with instructors regarding their experiences. Instructors reflected on how the analytics and their presentation in the dashboard have the potential to affect design education. We develop research implications addressing: (1) how indexing design analytics in the dashboard to actual design work instances helps design instructors reflect on what they mean and, more broadly, is a technique for how AI-based design analytics can support instructors' assessment and feedback experiences in situated course contexts; and (2) how multiscale design analytics, in particular, have the potential to support design education. By indexing, we mean linking which provides context, here connecting the numbers of the analytics with visually annotated design work instances.
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