Algorithmic Bias in Education
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Algorithmic Bias in Education
This Wiki summarizes the current evidence surrounding Algorithmic Bias in Education: which groups are impacted, and in which contexts.
For a relatively recent review on this topic, see Baker, R.S., Hawn, M.A. (in press) Algorithmic Bias in Education. To appear in International Journal of Artificial Intelligence and Education (pdf)
Note: Within this Wiki, we recommend that article editors use the group labels originally used within the publications being cited, to best represent the articles included here.
By Group Impacted
- Race and Ethnicity
- Gender: Male/Female
- Gender: Non-Binary and Transgender Learners
- Sexual Orientation
- Linguistic Origin
- National Origin or National Location
- International Students
- Native Language and Dialect
- Learners with Disabilities
- Age
- Urbanicity
- Parental Educational Background
- Socioeconomic Status
- Military-Connected Status
- Children of Migrant Workers
- Religion and Religious Background
- Public or Private K-12 School
- Intersectional Research
By Algorithm Application
- At-risk/Dropout/Stopout/Graduation Prediction
- Course Grade and GPA Prediction
- National and International Examination
- Short-term Performance and Learning Gains Prediction
- Automated Essay Scoring
- Speech Recognition for Education
- Other NLP Applications of Algorithms in Education
- Student Knowledge Modeling
- Engagement and Affect Detection
- Self-regulated Learning