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Machine Learning Techniques for Evaluating Student Performance
Josephine Oludipe
*
,
Faisal Saeed
, Rasheed Mohammed
*
Corresponding author for this work
Birmingham City University
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Social Sciences
Learning Method
100%
Student Performance
100%
Artificial Intelligence
100%
Evaluation Method
50%
Student Learning
25%
Educational Environment
25%
Student Knowledge
25%
Learning Level
25%
Educational Strategies
25%
Academic Success
25%
Learning Process
25%
Education
25%
Machine Learning Algorithm
25%
Logit Model
25%
Logistic Regression Analysis
25%
Xgboost
25%
Computer Science
Machine Learning Technique
100%
Artificial Intelligence
100%
Machine Learning
50%
Classification Accuracy
25%
Learning Process
25%
Predictive Model
25%
Influencing Factor
25%
Machine Learning Algorithm
25%
Extreme Gradient Boosting
25%
Logistic Regression
25%
Academic Outcome
25%
Time Constraint
25%
Learning System
25%
Chemical Engineering
Learning System
100%
Artificial Intelligence
100%
Xgboost
25%
Psychology
Artificial Intelligence
100%
Learning Algorithm
25%
Traditional Assessment
25%