Jerry Reivrick C. Nares
StudentMASTER
Santa Maria, Bulacan · FEU Institute of Technology
Personal Information
Short Biography
You may call me "Rev" even though my real name is Jerry Reivrick C. Nares. I go by that moniker since it's what I use when playing video games. Playing games and learning about various programming languages, their functions, and fixing problems were two things I truly enjoyed doing.
🛠️ Skills
Coding and Debugging
Novice (50%)
🎓 Educational Qualification
Secondary · Sep 2022 - Present
FEU Institute of Technology
Secondary · Jul 2020 - Jul 2022
Centro Escolar Integrated School - Malolos
Secondary · Jul 2016 - Mar 2020
Santa Maria Ecumenical School
Primary · Jul 2010 - Apr 2016
Santa Maria Ecumenical School
🏆 Honors and Awards
With Honors
With Honors
Issued by Centro Escolar Integrated School on April 15, 2021
👨🏻🏫 Seminars and Trainings
Attendee
Research Journey: Motivation to Publication
Awarded by Educational Innovation and Technology Hub on November 07, 2025
View Credential👥 Organizations and Memberships
FIT iTamaraws Esports Club
Varisty · October 30, 2022 - November 29, 2023
Research Publications
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Conference Paper · 10.1109/ICTKE67052.2025.11274447
Behavioral Intention to Use an e-Marketplace for Upcycled Products: Machine Learning based Analysis2025 23rd International Conference on ICT and Knowledge Engineering (ICT&KE), (2025), pp. 1-6
Upcycling is a sustainable solution that mitigates environmental changes, focusing on climate action, by extending the lifecycle of products and reducing wastage. This study investigates Filipino consumers’ behavioral intention to use an upcycling e-marketplace, highlighting the intersection of sustainability, consumer psychology, and digital platforms. Despite growing interest in circular economy models, adoption drivers in this domain remain underexplored and are rarely modeled with predictive analytics. To address this gap, the study collected data from 500 Filipino participants capturing environmental knowledge and concern, perceived ease of use and usefulness, attitude toward use, perceived behavioral control, subjective norms, user demand, and intention, then analyzed using multiple machine learning algorithms, namely, Decision Tree, Random Forest, Gradient Boosting, XGBoost, K-Nearest Neighbors, and Support Vector Machine. Among these, the Decision Tree model demonstrated the best balance of predictive accuracy (95%), precision (96%), and recall (91%), suggesting strong classification capability. Analysis of the importance of features revealed that Perceived Usefulness, Attitude Toward Use, and Subjective Norms were the most influential predictors of adoption, outweighing traditional environmental concerns. These findings underscore the importance of designing upcycling platforms that emphasize practical value, user convenience, and social validation. The study concludes that sustainable behavior is more likely when aligned with personal benefits and peer influence, rather than relying solely on environmental appeals.