Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test
Filipino students performed poorly in the PISA 2018 mathematics assessment, with more than 50% obtaining scores below the lowest proficiency level. Students from public schools also performed worse compared to their private school counterparts. We used machine learning approaches, specifically binar...
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oai:animorepository.dlsu.edu.ph:res_aki-10012023-05-23T06:28:12Z Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test Lapinid, Minie Rose C. Cordel, Macario O., II Teves, Jude Michael M. Yap, Sashmir A. Chua, Unisse C. Bernardo, Allan B. I Filipino students performed poorly in the PISA 2018 mathematics assessment, with more than 50% obtaining scores below the lowest proficiency level. Students from public schools also performed worse compared to their private school counterparts. We used machine learning approaches, specifically binary classification methods, to model the variables that best identified the poor performing students (below Level 1) vs. better performing students (Levels 1 to 6) using the PISA data from a nationally representative sample of 15-year-old Filipino students. We analyzed data from students in private and public schools separately. Several binary classification methods were applied, and the best classification model for both private and public school groups was the Random Forest classifier. The 10 variables with the highest impact on the model were identified for the private and public school groups. Five variables were similarly important in the private and public school models. But there were other distinct variables that relate to students’ motivations, family, and school experiences that were important in identifying the poor performing students in each school type. The results are discussed in relation to the social and social cognitive experiences of students that relate to socioeconomic contexts that differ between public and private schools. 2022-09-01T07:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/res_aki/4 https://animorepository.dlsu.edu.ph/context/res_aki/article/1001/viewcontent/dlsu_aki_working_paper_series_2022_09_085.pdf Angelo King Institute for Economic and Business Studies Animo Repository mathematics achievement machine learning Philippines public vs. private schools school type, socioeconomic differences PISA |
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mathematics achievement machine learning Philippines public vs. private schools school type, socioeconomic differences PISA Lapinid, Minie Rose C. Cordel, Macario O., II Teves, Jude Michael M. Yap, Sashmir A. Chua, Unisse C. Bernardo, Allan B. I Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
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Filipino students performed poorly in the PISA 2018 mathematics assessment, with more than 50% obtaining scores below the lowest proficiency level. Students from public schools also performed worse compared to their private school counterparts. We used machine learning approaches, specifically binary classification methods, to model the variables that best identified the poor performing students (below Level 1) vs. better performing students (Levels 1 to 6) using the PISA data from a nationally representative sample of 15-year-old Filipino students. We analyzed data from students in private and public schools separately. Several binary classification methods were applied, and the best classification model for both private and public school groups was the Random Forest classifier. The 10 variables with the highest impact on the model were identified for the private and public school groups. Five variables were similarly important in the private and public school models. But there were other distinct variables that relate to students’ motivations, family, and school experiences that were important in identifying the poor performing students in each school type. The results are discussed in relation to the social and social cognitive experiences of students that relate to socioeconomic contexts that differ between public and private schools. |
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Lapinid, Minie Rose C. Cordel, Macario O., II Teves, Jude Michael M. Yap, Sashmir A. Chua, Unisse C. Bernardo, Allan B. I |
author_facet |
Lapinid, Minie Rose C. Cordel, Macario O., II Teves, Jude Michael M. Yap, Sashmir A. Chua, Unisse C. Bernardo, Allan B. I |
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Lapinid, Minie Rose C. |
title |
Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
title_short |
Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
title_full |
Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
title_fullStr |
Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
title_full_unstemmed |
Which Filipino Students are Being Left Behind in Mathematics? Testing Machine Learning Models to Differentiate Lowest-Performing Filipino Students in Public and Private Schools in the 2018 PISA Mathematics Test |
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which filipino students are being left behind in mathematics? testing machine learning models to differentiate lowest-performing filipino students in public and private schools in the 2018 pisa mathematics test |
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Animo Repository |
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2022 |
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https://animorepository.dlsu.edu.ph/res_aki/4 https://animorepository.dlsu.edu.ph/context/res_aki/article/1001/viewcontent/dlsu_aki_working_paper_series_2022_09_085.pdf |
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