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<records>
<record>
<language>eng</language>
<publisher>Science and Education Publishing</publisher>
<journalTitle>Journal of Innovations in Teaching and Learning</journalTitle>
<eissn>2945-4638</eissn>
<publicationDate>2025-12-04</publicationDate>
<volume>5</volume>
<issue>2</issue>
<startPage>103</startPage>
<endPage>111</endPage>
<doi>10.12691/jitl-5-2-3</doi>
<publisherRecordId>JITL2025523</publisherRecordId>
<documentType>article</documentType>
<title language="eng">Trends and Applications of Data Mining for Improving Student Learning: A Systematic Mapping of Educational Data Mining Research in the Philippines</title>
<authors>
<author>
<name>Charles Darwin O. Godinez</name>
<email>charlesdarwingodinez@gmail.com</email>
<affiliationId>1</affiliationId>
</author>
<author>
<name>Laila S. Lomibao</name>
<affiliationId>1</affiliationId>
</author>

</authors>
<affiliationsList>
<affiliationName affiliationId="1">University of Science and Technology of Southern Philippines, Cagayan de Oro City, Philippines</affiliationName>

</affiliationsList>
<abstract language="eng">While traditional assessments offer snapshots of student knowledge, it often fails to capture the dynamic nature of learning and the intricate interplay of studentsĄŻ cognitive and metacognitive skills. With this, the burgeoning field of Educational Data Mining (EDM) research provides promise for innovative assessment that can provide deeper insights into student learning and inform effective teaching strategies. However, there are limited EDM research in Philippine educational systems that existing literature reviews on EDM applications often have broader geographical scope and may not capture the unique challenges and opportunities with the Philippine educational systems. This systematic mapping analyzed existing research on EDM applications to predict or improve student performance within Philippine educational contexts. Eighteen (18) EDM research in the Philippines were evaluated. The results showed that current Philippine EDM research focuses to make predictions or classifications of student performance or behavior, such as academic achievement, online learning adaptation, procrastination, and learning styles. Specifically in mathematics education, current EDM research explored broader applications focusing on general academic performance, online learning effectiveness, and student risk factors. A wide range of student data attributes such as age, sex, and parentsĄŻ education for demographic data, online learning skills for behavioral data, and overall grades and GPA for performance data are actively utilized in Philippine EDM research. A variety of algorithms lead by traditional algorithms ¨C Na&#239;ve Bayes and Decision Trees, have been successfully employed to carry out EDM tasks. The study also identified challenges related to data quality, availability, and ethical considerations. By identifying these trends and applications, this study can inform future efforts to leverage educational data for improving learning outcomes within the Philippine educational system.</abstract>
<fullTextUrl format="pdf">https://pubs.sciepub.com/jitl/5/2/3/jitl-5-2-3.pdf</fullTextUrl>
<keywords language="eng"><keyword>literature review</keyword>
<keyword>Mathematics Education</keyword>
<keyword>predicting student performance</keyword>
</keywords>
</record>
</records>
