Difference between revisions of "Gender: Male/Female"

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Kai et al. (2017) [https://www.upenn.edu/learninganalytics/ryanbaker/DLRN-eVersity.pdf pdf]
Kai et al. (2017) [https://www.upenn.edu/learninganalytics/ryanbaker/DLRN-eVersity.pdf pdf]
* Models predicting student retention in an online college program
* Models predicting student retention in an online college program
* performance was very good for both groups
* J48 decision trees achieved significantly lower Kappa but higher AUC for male students than female students
* JRip decision tree model performed more equitably than a J48 decision tree model for both male and female students.
* JRip decision rules achieved much lower Kappa and AUC for male students than female students
* JRip model had moderately better performance for female
 
students than male students
 
Christie et al. (2019) [https://files.eric.ed.gov/fulltext/ED599217.pdf pdf]
* Models predicting student's high school dropout
* The decision trees showed very minor differences in AUC between female and male students
 
 
Hu and Rangwala (2020) [https://files.eric.ed.gov/fulltext/ED608050.pdf 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 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) [https://www.upenn.edu/learninganalytics/ryanbaker/EDM2019_paper56.pdf pdf]
* Models predicting six-year college graduation
* False negatives rates were greater for male students than female students when SVM, Logistic Regression, and SGD were used
 
 
Gardner, Brooks and Baker (2019) [https://www.upenn.edu/learninganalytics/ryanbaker/LAK_PAPER97_CAMERA.pdf pdf]
* Model predicting MOOC dropout, specifically through slicing analysis
* Some algorithms studied performed worse for female students than male students, particularly in courses with 45% or less male presence
 
 
Riazy et al. (2020) [https://www.scitepress.org/Papers/2020/93241/93241.pdf pdf]
* Model predicting course outcome
* Marginal differences were found for prediction quality and in overall proportion of predicted pass between groups
* Inconsistent in direction between algorithms.
 
 
Lee and Kizilcec (2020) [https://arxiv.org/pdf/2007.00088.pdf pdf]
* Models predicting college success (or median grade or above)
* Random forest algorithms performed significantly worse for male students than female students
* The fairness of the model, namely demographic parity and equality of opportunity, as well as its accuracy, improved after correcting the threshold values from 0.5 to group-specific values
 
 
Yu et al. (2020) [https://files.eric.ed.gov/fulltext/ED608066.pdf pdf]
* Model predicting undergraduate short-term (course grades) and long-term (average GPA) success
* Female students were inaccurately predicted to achieve greater short-term and long-term success than male students.
* The fairness of models improved when a combination of institutional and click data was used in the model
 
 
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
* Whether the socio-demographic information was included or not, the model showed worse true negative rates and worse accuracy for male students
* The model showed better recall for male students, especially for those studying in person
* The difference in recall and true negative rates were lower, and thus fairer, for male students studying online if their socio-demographic information was not included in the model
 
 
Riazy et al. (2020) [https://www.scitepress.org/Papers/2020/93241/93241.pdf pdf]
* Models predicting course outcome of students in a virtual learning environment (VLE)
* More male students were predicted to pass the course than female students, but  this overestimation was fairly small and not consistent across different algorithms
* Among the algorithms, Naive Bayes had the lowest normalized mutual information value and the highest ABROCA value
 
 
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 system performed comparably accurately for male and female students when assessing their 11th grade essays
 
 
 
Bridgeman et al. (2012) [https://www.tandfonline.com/doi/pdf/10.1080/08957347.2012.635502?needAccess=true pdf]
* A later version of automated scoring models for evaluating English essays, or e-rater
* E-Rater system correlated comparably well with human rater when assessing TOEFL and GRE essays written by male and female students
 
 
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 for male than female students; results were mixed for F1.
 
 
Zhang et al. (2022)
* Detecting student use of self-regulated learning (SRL) in mathematical problem-solving process
* For each SRL-related detector, relatively small differences in AUC were observed across gender groups.
* No gender group consistently had best-performing detectors
 
 
Rzepka et al. (2022) [https://www.insticc.org/node/TechnicalProgram/CSEDU/2022/presentationDetails/109621 pdf]
* Models predicting whether student will quit spelling learning activity without completing
* Multiple algorithms have slightly better false positive rates and AUC ROC for male students than female students, but equivalent performance on multiple other metrics.
 
 
Li, Xing, & Leite (2022) [https://dl.acm.org/doi/pdf/10.1145/3506860.3506869?casa_token=OZmlaKB9XacAAAAA:2Bm5XYi8wh4riSmEigbHW_1bWJg0zeYqcGHkvfXyrrx_h1YUdnsLE2qOoj4aQRRBrE4VZjPrGw pdf]
* Models predicting whether two students will communicate on an online discussion forum
* Multiple fairness approaches lead to ABROCA of under 0.01 for female versus male students
 
 
Sha et al. (2021) [https://angusglchen.github.io/files/AIED2021_Lele_Assessing.pdf pdf]
* Models predicting a MOOC discussion forum post is content-relevant or content-irrelevant
* Some algorithms achieved ABROCA under 0.01 for female students versus male students,
but other algorithms (Naive Bayes) had ABROCA as high as 0.06
* Balancing the size of each group in the training set reduced ABROCA
 
 
Litman et al. (2021) [https://link.springer.com/chapter/10.1007/978-3-030-78292-4_21 html]
* Automated essay scoring models inferring text evidence usage
* All algorithms studied have less than 1% of error explained by whether student is female and male
 
 
Sha et al. (2022) [https://ieeexplore.ieee.org/abstract/document/9849852]
* Three data sets and algorithms: predicting course pass/fail (random forest), dropout (neural network), and forum post relevance (neural network)
* A range of over-sampling methods tested
* Regardless of over-sampling method used, course pass/fail performance was moderately better for males, dropout performance was slightly better for males, and forum post relevance performance was moderately better for females.
 
 
Deho et al. (2023) [https://files.osf.io/v1/resources/5am9z/providers/osfstorage/63eaf170a3fade041fe7c9db?format=pdf&action=download&direct&version=1]
* Predicting whether course grade will be above or below 0.5
* Better prediction for female students in some courses, better prediction for male students in other courses
 
 
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
* DEWS prediction is comparable for males and females
 
 
Zhang et al. (2023) [https://learninganalytics.upenn.edu/ryanbaker/ISLS23_annotation%20detector_short_submit.pdf pdf]
* Models developed to detect attributes of student feedback for other students’ mathematics solutions, reflecting the presence of three constructs:1) commenting on process, 2) commenting on the answer, and 3) relating to self.
* Models have approximately equal performance for males and females.
 
 
Almoubayyed et al. (2023)[https://educationaldatamining.org/EDM2023/proceedings/2023.EDM-long-papers.18/2023.EDM-long-papers.18.pdf pdf]
* Models discovering generalization of the performance for reading comprehension ability in the context of middle school students’ usage of Carnegie Learning’s ITS for mathematics instruction
*Model trained on smaller dataset achieves greater fairness in prediction for male and female students
* For model trained on larger dataset, prediction is more accurate for female students than male students.
 
 
Chiu (2020) [https://files.eric.ed.gov/fulltext/EJ1267654.pdf pdf]
*Model identifies affective states (boredom, concentration, confusion, frustration, off task and gaming) of middle school students’ online mathematics learning in predicting their choice to study STEM in higher education.
*Model detects interaction with the ASSISTments system
*Model performs better for males (AUC =0.641 for RFPS; AUC =0.571 for LR) than female students (AUC = 0.492 for RFPS; AUC=0.535 for LR).
 
 
 
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 males in open-ended environment (FNR=0.70 for males and FNR=0.53 for females)
* Model performs worse for females in flipped classrooms(FNR=0.56 for females and FNR=0.43 for males)

Latest revision as of 23:13, 27 November 2023

Kai et al. (2017) pdf

  • Models predicting student retention in an online college program
  • J48 decision trees achieved significantly lower Kappa but higher AUC for male students than female students
  • JRip decision rules achieved much lower Kappa and AUC for male students than female students


Christie et al. (2019) pdf

  • Models predicting student's high school dropout
  • The decision trees showed very minor differences in AUC between female and male 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 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 male students than female students when SVM, Logistic Regression, and SGD were used


Gardner, Brooks and Baker (2019) pdf

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


Riazy et al. (2020) pdf

  • Model predicting course outcome
  • Marginal differences were found for prediction quality and in overall proportion of predicted pass between groups
  • Inconsistent in direction between algorithms.


Lee and Kizilcec (2020) pdf

  • Models predicting college success (or median grade or above)
  • Random forest algorithms performed significantly worse for male students than female students
  • The fairness of the model, namely demographic parity and equality of opportunity, as well as its accuracy, improved after correcting the threshold values from 0.5 to group-specific values


Yu et al. (2020) pdf

  • Model predicting undergraduate short-term (course grades) and long-term (average GPA) success
  • Female students were inaccurately predicted to achieve greater short-term and long-term success than male students.
  • The fairness of models improved when a combination of institutional and click data was used in the model


Yu et al. (2021) pdf

  • Models predicting college dropout for students in residential and fully online program
  • Whether the socio-demographic information was included or not, the model showed worse true negative rates and worse accuracy for male students
  • The model showed better recall for male students, especially for those studying in person
  • The difference in recall and true negative rates were lower, and thus fairer, for male students studying online if their socio-demographic information was not included in the model


Riazy et al. (2020) pdf

  • Models predicting course outcome of students in a virtual learning environment (VLE)
  • More male students were predicted to pass the course than female students, but this overestimation was fairly small and not consistent across different algorithms
  • Among the algorithms, Naive Bayes had the lowest normalized mutual information value and the highest ABROCA value


Bridgeman et al. (2009) pdf

  • Automated scoring models for evaluating English essays, or e-rater
  • E-Rater system performed comparably accurately for male and female students when assessing their 11th grade essays


Bridgeman et al. (2012) pdf

  • A later version of automated scoring models for evaluating English essays, or e-rater
  • E-Rater system correlated comparably well with human rater when assessing TOEFL and GRE essays written by male and female students


Verdugo et al. (2022) pdf

  • An algorithm predicting dropout from university after the first year
  • Several algorithms achieved better AUC for male than female students; results were mixed for F1.


Zhang et al. (2022)

  • Detecting student use of self-regulated learning (SRL) in mathematical problem-solving process
  • For each SRL-related detector, relatively small differences in AUC were observed across gender groups.
  • No gender group consistently had best-performing detectors


Rzepka et al. (2022) pdf

  • Models predicting whether student will quit spelling learning activity without completing
  • Multiple algorithms have slightly better false positive rates and AUC ROC for male students than female students, but equivalent performance on multiple other metrics.


Li, Xing, & Leite (2022) pdf

  • Models predicting whether two students will communicate on an online discussion forum
  • Multiple fairness approaches lead to ABROCA of under 0.01 for female versus male students


Sha et al. (2021) pdf

  • Models predicting a MOOC discussion forum post is content-relevant or content-irrelevant
  • Some algorithms achieved ABROCA under 0.01 for female students versus male students,

but other algorithms (Naive Bayes) had ABROCA as high as 0.06

  • Balancing the size of each group in the training set reduced ABROCA


Litman et al. (2021) html

  • Automated essay scoring models inferring text evidence usage
  • All algorithms studied have less than 1% of error explained by whether student is female and male


Sha et al. (2022) [1]

  • Three data sets and algorithms: predicting course pass/fail (random forest), dropout (neural network), and forum post relevance (neural network)
  • A range of over-sampling methods tested
  • Regardless of over-sampling method used, course pass/fail performance was moderately better for males, dropout performance was slightly better for males, and forum post relevance performance was moderately better for females.


Deho et al. (2023) [2]

  • Predicting whether course grade will be above or below 0.5
  • Better prediction for female students in some courses, better prediction for male students in other courses


Permodo et al. (2023) pdf

  • Paper discusses system that predicts probabilities of on-time graduation
  • DEWS prediction is comparable for males and females


Zhang et al. (2023) pdf

  • Models developed to detect attributes of student feedback for other students’ mathematics solutions, reflecting the presence of three constructs:1) commenting on process, 2) commenting on the answer, and 3) relating to self.
  • Models have approximately equal performance for males and females.


Almoubayyed et al. (2023)pdf

  • Models discovering generalization of the performance for reading comprehension ability in the context of middle school students’ usage of Carnegie Learning’s ITS for mathematics instruction
  • Model trained on smaller dataset achieves greater fairness in prediction for male and female students
  • For model trained on larger dataset, prediction is more accurate for female students than male students.


Chiu (2020) pdf

  • Model identifies affective states (boredom, concentration, confusion, frustration, off task and gaming) of middle school students’ online mathematics learning in predicting their choice to study STEM in higher education.
  • Model detects interaction with the ASSISTments system
  • Model performs better for males (AUC =0.641 for RFPS; AUC =0.571 for LR) than female students (AUC = 0.492 for RFPS; AUC=0.535 for LR).


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 males in open-ended environment (FNR=0.70 for males and FNR=0.53 for females)
  • Model performs worse for females in flipped classrooms(FNR=0.56 for females and FNR=0.43 for males)