Team Name | Bitwise |
Track | Student Track 2 |
Use Case | Option 2 | Ethical Data Analysis | Graduate School Admission |
Technology | Not defined yet. |
Region | LATAM |
Team lead | Luna Katalina Quintero Jiménez |
Team members |
Luna Quintero Jiménez @lunakjimenez María García Salazar @mcamilags Mauro González Figueroa @MauroGonzalez51 Michael Taboada Naranjo @MichaelTaboada |
Social media handles |
www.linkedin.com/in/luna-katalina-quintero-jiménez-549264294 www.linkedin.com/in/maria-camila-garc%C3%ADa-salazar-469362241/ |
Is your team interested in participating in an interview? | Y |
Pitch Video:
Jury Video:
Team Photo:
What a Pitch Video... that was great!!! Way to bring my fake university to life!
And, overall, great job with your analysis. I liked how you explained the models under consideration and examined the strength of the predictors across a range of model specifications. Moreover, I liked the Cluster Analysis flow as a way to make the descriptive statistics a bit more accessible.
A couple of follow-up questions: did you use any of the Fairness + Bias Assessment tools in SAS Model Studio? And how did you weigh the tradeoff between select variables (i.e., gender/legacy admissions/cultural identity) and overall model fit?
Again, nice work!