Difference between revisions of "At-risk/Dropout/Stopout/Graduation Prediction"

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Kai et al. (2017) [https://files.eric.ed.gov/fulltext/ED596601.pdf pdf]
Kai et al. (2017) [https://files.eric.ed.gov/fulltext/ED596601.pdf pdf]
* Models predicting student retention in an online college program
* Models predicting student retention in an online college program
* J-48 decision trees achieved much higher Kappa and AUC for students whose parents did not attend college than those whose parents did
* J-48 decision trees achieved much higher Kappa and AUC for students whose parents did not attend college than those whose parents did
* J-Rip decision rules  achieved much higher Kappa and AUC for students whose parents did not attended college than those whose parents did
* J-Rip decision rules  achieved much higher Kappa and AUC for students whose parents did not attended college than those whose parents did


Line 47: Line 47:
Yu et al. (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
* The models had worse true negative rates and recall for underrepresented minority (URM) students and for male students in residential and online programs, whether their status was included or not
* The model showed better recall for students who are under-represented minority (URM; not White or Asian), male, first-generation, or with greater financial needs
* The model was less accurate for URM students studying in residential program.
* Whether the socio-demographic information was included or not, the model showed worse accuracy and true negative rates for residential students who are under-represented minority (URM; not White or Asian), male, first-generation, or with greater financial needs
* The model was worse for male students studying in online program in terms of true negative rates, recall and accuracy
* Both accuracy and true negative rates were better for students who are first-generation, or with greater financial needs
* Models for first-generation residential students showed worse accuracy and true negative rate (i.e., predicting power of sophomore year persistence in college)
 
* Models for first-generation residential students showed significantly better recall (i.e., proportion of correctly identified dropouts) than online peers, whether their status was included or not
 
* Model performed with significantly lower accuracy and true negative rate for residential students with greater financial need than online counterparts, whether their status was included or not
Verdugo et al. (2022) [https://dl.acm.org/doi/abs/10.1145/3506860.3506902 pdf]
* An algorithm predicting dropout from university after the first year
* Several algorithms achieved better AUC and F1 for students who attended public high schools than for students who attended private high schools.
* Several algorithms predicted better AUC for male students than female students; F1 scores were more balanced.
 
 
Sha et al. (2022) [https://ieeexplore.ieee.org/abstract/document/9849852]
* Predicting dropout in XuetangX platform using neural network
* A range of over-sampling methods tested
* Regardless of over-sampling method used, dropout performance was slightly better for males.
 
 
Queiroga et al. (2022) [https://www.mdpi.com/2078-2489/13/9/401 pdf]
* Models predicting secondary school students at risk of failure or dropping out
* Model was unable to make prediction of student success (F1 score = 0.0) for students not in a social welfare program (higher socioeconomic status)
* Model had slightly lower AUC ROC (0.52 instead of 0.56) for students not in a social welfare program (higher socioeconomic status)
 
 
Permodo et al.(2023) [https://www.researchgate.net/publication/370001437_Difficult_Lessons_on_Social_Prediction_from_Wisconsin_Public_Schools pdf]
* Paper discusses system that predicts probabilities of on-time graduation
*Prediction is less accurate for White students than other students
*Prediction is more accurate for students with Disabilities than students without Disabilities
*Prediction is more accurate for low-income students than for non-low-income students
*Prediction is comparable for Males and Females
 
 
Cock et al.(2023) [[https://dl.acm.org/doi/abs/10.1145/3576050.3576149?casa_token=6Fjh-EUzN-gAAAAA%3AtpRMYzSAVoQFYNzwY5gwSsrnzHIlI0tUjMq6okwgdcCUmuBMVZEtn8eLO52dCtIYUbrHBV_Il9Sx pdf]]
* Paper investigates biases in models designed to early identify middle school students at risk of failing in flipped-classroom course and open-ended exploration environment (TugLet)
* Model performs worse for students from school with higher socio-economic status in open-ended environment (FNR 0.73 for higher SES and 0.57 for medium SES)
* Model performs worse for males in open-ended environment (higher FNR for males than females)
* Model performs worse for students with diploma from foreign country in flipped classroom 
* Model performs worse for females in flipped classrooms

Latest revision as of 22:54, 27 November 2023

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
  • J48 decision trees achieved significantly lower Kappa but higher AUC for male students than female students
  • JRip decision rules achieved almost identical Kappa and AUC for Black students and White students
  • JRip decision trees achieved much lower Kappa and AUC for male students than female 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
  • Multiple cooperative classifier model (MCCM) model was the best at reducing bias, or discrimination against male students, performing particularly better for Psychology course.
  • Other models (Logistic Regression and Rawlsian Fairness) performed far worse for male students, performing particularly worse in Computer Science and Electrical Engineering.


Anderson et al. (2019) pdf

  • Models predicting six-year college graduation
  • False negatives rates were greater for Latino students when Decision Tree and Random Forest yielded was used
  • White students had higher false positive rates across all models, Decision Tree, SVM, Logistic Regression, Random Forest, and SGD
  • False negatives rates were greater for male students than female students when SVM, Logistic Regression, and SGD were used


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.
  • The decision trees showed very minor differences in AUC between female and male students


Gardner, Brooks and Baker (2019) [pdf]

  • Model predicting MOOC dropout, specifically through slicing analysis
  • Some algorithms performed worse for female students than male students, particularly in courses with 45% or less male presence


Baker et al. (2020) [pdf]

  • Model predicting student graduation and SAT scores for military-connected students
  • For prediction of graduation, algorithms applying across population resulted an AUC of 0.60, degrading from their original performance of 70% or 71% to chance.
  • For prediction of SAT scores, algorithms applying across population resulted in a Spearman's ρ of 0.42 and 0.44, degrading a third from their original performance to chance.


Kai et al. (2017) pdf

  • Models predicting student retention in an online college program
  • J-48 decision trees achieved much higher Kappa and AUC for students whose parents did not attend college than those whose parents did
  • J-Rip decision rules achieved much higher Kappa and AUC for students whose parents did not attended college than those whose parents did


Yu et al. (2021) pdf

  • Models predicting college dropout for students in residential and fully online program
  • The model showed better recall for students who are under-represented minority (URM; not White or Asian), male, first-generation, or with greater financial needs
  • Whether the socio-demographic information was included or not, the model showed worse accuracy and true negative rates for residential students who are under-represented minority (URM; not White or Asian), male, first-generation, or with greater financial needs
  • Both accuracy and true negative rates were better for students who are first-generation, or with greater financial needs


Verdugo et al. (2022) pdf

  • An algorithm predicting dropout from university after the first year
  • Several algorithms achieved better AUC and F1 for students who attended public high schools than for students who attended private high schools.
  • Several algorithms predicted better AUC for male students than female students; F1 scores were more balanced.


Sha et al. (2022) [1]

  • Predicting dropout in XuetangX platform using neural network
  • A range of over-sampling methods tested
  • Regardless of over-sampling method used, dropout performance was slightly better for males.


Queiroga et al. (2022) pdf

  • Models predicting secondary school students at risk of failure or dropping out
  • Model was unable to make prediction of student success (F1 score = 0.0) for students not in a social welfare program (higher socioeconomic status)
  • Model had slightly lower AUC ROC (0.52 instead of 0.56) for students not in a social welfare program (higher socioeconomic status)


Permodo et al.(2023) pdf

  • Paper discusses system that predicts probabilities of on-time graduation
  • Prediction is less accurate for White students than other students
  • Prediction is more accurate for students with Disabilities than students without Disabilities
  • Prediction is more accurate for low-income students than for non-low-income students
  • Prediction is comparable for Males and Females


Cock et al.(2023) [pdf]

  • Paper investigates biases in models designed to early identify middle school students at risk of failing in flipped-classroom course and open-ended exploration environment (TugLet)
  • Model performs worse for students from school with higher socio-economic status in open-ended environment (FNR 0.73 for higher SES and 0.57 for medium SES).
  • Model performs worse for males in open-ended environment (higher FNR for males than females)
  • Model performs worse for students with diploma from foreign country in flipped classroom
  • Model performs worse for females in flipped classrooms