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Predicting Academic Performance of Immigrant Students Using XGBoost Regressor

Author

Listed:
  • Selvaprabu Jeganathan

    (B. S. Abdur Rahman Crescent Institute of Science and Technology, India)

  • Arun Raj Lakshminarayanan

    (B. S. Abdur Rahman Crescent Institute of Science and Technology, India)

  • Nandhakumar Ramachandran

    (VIT-AP University, India)

  • Godwin Brown Tunze

    (Mbeya University of Science and Technology, Tanzania)

Abstract

The education sector has been effectively dealing with the prediction of academic performance of the Immigrant students since the research associated with this domain proves beneficial enough for those countries where the ministry of education has to cater to such immigrants for altering and updating policies in order to elevate the overall education pedagogy for them. The present research begins with analyzing varied educational data mining and machine learning techniques that helps in assessing the data fetched form PISA. It’s elucidated that XGBoost stands out to be the ideal most machine learning technique for achieving the desired results. Subsequently, the parameters have been optimized using the hyper parameter tuning techniques and implemented on the XGBoost Regressor algorithm. Resultant there is low error rate and higher level of predictive ability using the machine learning algorithms which assures better predictions using the PISA data. The final results have been discussed along with the upcoming future research work.

Suggested Citation

  • Selvaprabu Jeganathan & Arun Raj Lakshminarayanan & Nandhakumar Ramachandran & Godwin Brown Tunze, 2022. "Predicting Academic Performance of Immigrant Students Using XGBoost Regressor," International Journal of Information Technology and Web Engineering (IJITWE), IGI Global, vol. 17(1), pages 1-19, January.
  • Handle: RePEc:igg:jitwe0:v:17:y:2022:i:1:p:1-19
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