SocioEconomicMag Meets a Platform for SES-Diverse College Students: A Case Study
April 10, 2023 Β· Declared Dead Β· π arXiv.org
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Authors
Puja Agarwal, Divya Prem, Christopher Bogart, Abrar Fallatah, Aileen Abril Castro-Guzman, Pannapat Chanpaisaeng, Stella Doehring, Margaret Burnett, Anita Sarma
arXiv ID
2304.04873
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Emerging research shows that individual differences in how people use technology sometimes cluster by socioeconomic status (SES) and that when technology is not socioeconomically inclusive, low-SES individuals may abandon it. To understand how to improve technology's SES-inclusivity, we present a multi-phase case study on SocioEconomicMag (SESMag), an emerging inspection method for socio+economic inclusivity. In our 16-month case study, a software team developing a learning management platform used SESMag to evaluate and then to improve their platform's SES-inclusivity. The results showed that (1) the practitioners identified SES-inclusivity bugs in 76% of the features they evaluated; (2) these inclusivity bugs actually arise among low-SES college students; and (3) the SESMag process pointed ways towards fixing these bugs. Finally, (4) a user study with SES-diverse college students showed that the platform's SES-inclusivity eradicated 45-54% of the bugs; for some types of bugs, the bug instance eradication rate was 80% or higher.
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