FEU Institute of Technology

Educational Innovation and Technology Hub

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Zrone Jinrx Jbryl F. Verzosa

Student

BSITBA Student at FEU Institute of Technology

FEU Institute of Technology

🛠️ Skills

Continuous Learning

Expert (90%)

Initiative

Advanced (80%)

Flexibility

Advanced (80%)

Problem-Solving

Advanced (80%)

Teamwork and Collaboration

Expert (85%)

🎓 Educational Qualification

Tertiary · Aug 2022 - Present

Bachelor of Science in Information Technology

Business Analytics · FEU Institute of Technology

Secondary · Aug 2019 - Jun 2021

Lorma Colleges Senior High School - San Juan, La Union

Secondary · Aug 2015 - May 2019

Lorma Colleges Special Science High School - San Juan, La Union

📜 Licenses and Certifications

PMI Project Management Ready™

Issued by Project Management Institute on March 13, 2025

View Credential

IT Specialist - Networking

Issued by Certiport on July 10, 2024

View Credential

IT Specialist - Python

Issued by Certiport on March 26, 2024

View Credential

👨🏻‍🏫 Seminars and Trainings

Attendee

Mastering Teamwork: Enhancing Collaboration through Effective Communication

Awarded by Philippine Society of Information Technology Educators on September 27, 2023

👥 Organizations and Memberships

FEU Tech Alliance of Information Technology Students

Member · September 19, 2022 - September 01, 2023

Research Publications

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Conference Paper · 10.1109/ACDSA67686.2026.11467769

Examining Purchase Intention Using Machine Learning: The Case of a Local Artisan E-Commerce

2026 International Conference on Artificial Intelligence, Computer, Data Sciences and Applications (ACDSA), (2026), pp. 1-6

View Paper

Local artisan products are essential in preserving cultural heritage and supporting community livelihoods. They contribute to e-commerce initiatives aiming to address sustainability through ethical consumption, reduced environmental impact, and inclusive economic growth. This paper examines the roles of various factors in online shopping intention of local artisan products. The data were collected through surveys and analyzed using various machine learning models such as Decision Trees, Gradient Boosting, Random Forests, XGBoost, K-Nearest Neighbors, and Support Vector Machines to predict consumer behavior and market trends. Results show that support vector machine outperforms the rest of the models in predicting online shopping intention of local artisan products. The findings provide insights into e-commerce strategies for sustainable economic development and cultural preservation in the Philippines.

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