Difference between revisions of "Latino/Latina/Latinx/Hispanic Learners in North America"
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Lee and Kizilcec (2020) | Christie et al. (2019) [https://files.eric.ed.gov/fulltext/ED599217.pdf pdf] | ||
* Models predicting student's high school dropout | |||
* The decision trees showed little difference in AUC among Hispanic, White, Black, Asian, American Indian and Alaska Native, and Native Hawaiian and Pacific Islander. | |||
Lee and Kizilcec (2020) [https://arxiv.org/pdf/2007.00088.pdf pdf] | |||
* Models predicting college success (or median grade or above) | * 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 | * Random forest algorithms performed significantly worse for underrepresented minority students (URM; Hispanic, American Indian, Black, Hawaiian or Pacific Islander, 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 | * 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) | 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 | * Model predicting undergraduate short-term (course grades) and long-term (average GPA) success | ||
* Hispanic students were inaccurately predicted to perform worse for both short-term and long-term | * Hispanic 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 | * 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) [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 for students who are underrepresented minority (URM; or not White or Asian), and worse accuracy if URM students are studying in person | |||
* The model showed better recall for URM students, whether they were in residential or online program | |||
Bridgeman et al. (2009) [https://www.researchgate.net/publication/242203403_Considering_Fairness_and_Validity_in_Evaluating_Automated_Scoring page] | |||
* Automated scoring models for evaluating English essays, or e-rater | |||
* E-Rater gave significantly better scores than human rater for 11th grade essays written by Hispanic students and Asian-American students | |||
Jiang & Pardos (2021) [https://dl.acm.org/doi/pdf/10.1145/3461702.3462623 pdf] | |||
* Predicting university course grades using LSTM | |||
* Roughly equal accuracy across racial groups | |||
* Slightly better accuracy (~1%) across racial groups when including race in model | |||
Zhang et al. (2022) [https://www.upenn.edu/learninganalytics/ryanbaker/EDM22_paper_35.pdf pdf] | |||
* 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 racial/ethnic groups. | |||
* No racial/ethnic group consistently had best-performing detectors | |||
Kung & Yu (2020) | |||
[https://dl.acm.org/doi/pdf/10.1145/3386527.3406755 pdf] | |||
* Predicting course grades and later GPA at public U.S. university | |||
* Poorer independence, separation, sufficiency for Latinx students than white students for five different classic machine learning algorithms | |||
Jeong et al. (2022) [https://fated2022.github.io/assets/pdf/FATED-2022_paper_Jeong_Racial_Bias_ML_Algs.pdf] | |||
* Predicting 9th grade math score from academic performance, surveys, and demographic information | |||
* Despite comparable accuracy, model tends to underpredict Hispanic students' performance | |||
* Several fairness correction methods equalize false positive and false negative rates across groups. | |||
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 Hispanic/Latinx, African American, and White students. |
Latest revision as of 19:49, 28 June 2023
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
Christie et al. (2019) pdf
- Models predicting student's high school dropout
- The decision trees showed little difference in AUC among Hispanic, White, Black, 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; Hispanic, American Indian, Black, Hawaiian or Pacific Islander, 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 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
- Hispanic 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 socio-demographic information was included or not, the model showed worse true negative rates for students who are underrepresented minority (URM; or not White or Asian), and worse accuracy if URM students are studying in person
- The model showed better recall for URM students, whether they were in residential or online program
Bridgeman et al. (2009) page
- Automated scoring models for evaluating English essays, or e-rater
- E-Rater gave significantly better scores than human rater for 11th grade essays written by Hispanic students and Asian-American students
Jiang & Pardos (2021) pdf
- Predicting university course grades using LSTM
- Roughly equal accuracy across racial groups
- Slightly better accuracy (~1%) across racial groups when including race in model
Zhang et al. (2022) pdf
- 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 racial/ethnic groups.
- No racial/ethnic group consistently had best-performing detectors
Kung & Yu (2020)
pdf
- Predicting course grades and later GPA at public U.S. university
- Poorer independence, separation, sufficiency for Latinx students than white students for five different classic machine learning algorithms
Jeong et al. (2022) [1]
- Predicting 9th grade math score from academic performance, surveys, and demographic information
- Despite comparable accuracy, model tends to underpredict Hispanic students' performance
- Several fairness correction methods equalize false positive and false negative rates across groups.
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 Hispanic/Latinx, African American, and White students.