Difference between revisions of "Black/African-American Learners in North America"

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Yu and colleagues (2021) [[https://dl.acm.org/doi/pdf/10.1145/3430895.3460139 pdf]]
Yu et al. (2021) [[https://dl.acm.org/doi/pdf/10.1145/3430895.3460139 pdf]]
* Models predicting college dropout for students in residential and fully online program
* Models predicting college dropout for students in residential and fully online program
* Whether the protected attributed were included or not, the models had worse true negative rates but better recall for underrepresented minority (URM) students, in residential and online programs.
* Whether the protected attributed were included or not, the models had worse true negative rates but better recall for underrepresented minority (URM) students, in residential and online programs.
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Ramineni & Williamson (2018) [[https://onlinelibrary.wiley.com/doi/10.1002/ets2.12192 pdf]]
Ramineni & Williamson (2018) [[https://onlinelibrary.wiley.com/doi/10.1002/ets2.12192 pdf]]
* Revised automated scoring engine for assessing GSE essay
* Revised automated scoring engine for assessing GRE essay
* Relative weakness in content and organization by African American test takers resulted in lower scores than Chinese peers who wrote longer.
* Relative weakness in content and organization by African American test takers resulted in lower scores than Chinese peers who wrote longer.
Bridgeman et al. (2009) [[https://www.researchgate.net/publication/242203403_Considering_Fairness_and_Validity_in_Evaluating_Automated_Scoring pdf]]
* Automated scoring models for evaluating English essays, or e-rater
* E-rater gave significantly higher score for 11th grade essays written by Asian American and Hispanic students, particularly, Hispanic female students
* The score difference between human rater and e-rater was significantly smaller for 11th grade essays written by White and African American students.

Revision as of 21:51, 11 May 2022

Kai et al. (2017) pdf

  • Models predicting student retention in an online college program
  • J48 decision trees achieved much lower Kappa and AUC for Black students than White students
  • JRip decision rules achieved almost identical Kappa and AUC for Black students and White students


Hu and Rangwala (2020) pdf

  • Models predicting if a college student will fail in a course
  • Multiple cooperative classifier model (MCCM) model was the best at reducing bias, or discrimination against African-American students, while other models (particularly Logistic Regression and Rawlsian Fairness) performed far worse
  • The level of bias was inconsistent across courses, with MCCM prediction showing the least bias for Psychology and the greatest bias for Computer Science


Christie et al. (2019) pdf

  • Models predicting student's high school dropout
  • The decision trees showed little difference in AUC among White, Black, Hispanic, Asian, American Indian and Alaska Native, and Native Hawaiian and Pacific Islander.


Lee and Kizilcec (2020) [pdf]

  • Models predicting college success (or median grade or above)
  • Random forest algorithms performed significantly worse for underrepresented minority students (URM; American Indian, Black, Hawaiian or Pacific Islander, Hispanic, and Multicultural) than non-URM students (White and Asian)
  • The fairness of the model, namely demographic parity and equality of opportunity, as well as its accuracy, improved after correcting the threshold values


Yu et al. (2020) [pdf]

  • Model predicting undergraduate short-term (course grades) and long-term (average GPA) success
  • Black students were inaccurately predicted to perform worse for both short-term and long-term
  • The fairness of models improved when either click or a combination of click and survey data, and not institutional data, was included in the model


Yu et al. (2021) [pdf]

  • Models predicting college dropout for students in residential and fully online program
  • Whether the protected attributed were included or not, the models had worse true negative rates but better recall for underrepresented minority (URM) students, in residential and online programs.
  • The model was less accurate for URM students studying in residential program.


Ramineni & Williamson (2018) [pdf]

  • Revised automated scoring engine for assessing GRE essay
  • Relative weakness in content and organization by African American test takers resulted in lower scores than Chinese peers who wrote longer.


Bridgeman et al. (2009) [pdf]

  • Automated scoring models for evaluating English essays, or e-rater
  • E-rater gave significantly higher score for 11th grade essays written by Asian American and Hispanic students, particularly, Hispanic female students
  • The score difference between human rater and e-rater was significantly smaller for 11th grade essays written by White and African American students.