FEU Institute of Technology

Educational Innovation and Technology Hub

Loading...

Hadji J. Tejuco

3 Publications
Utilizing Modified Viterbi Algorithm for Religious Text: A Cebuano Part-of-Speech Tagging

2024 International Conference on IT Innovation and Knowledge Discovery (ITIKD), (2025), pp. 1-6

Conference Paper | Published: January 1, 2025

View Article
Abstract
Part of speech tagging (POS) is crucial in natural language processing, identifying the grammatical categories of words in sentences. This research highlights the lack of focus on POS tagging for Asian languages, particularly Cebuano. Inadequate research on Cebuano religious text has hindered linguistic documentation and understanding its grammar and vocabulary. This study introduces a Parts-of-Speech Tagging for Cebuano utilizing a Modified Viterbi Algorithm. The researchers also apply a method for handling unfamiliar words. Results indicate that the algorithm performs exceptionally well on a religious text corpus comprising 50,000 datasets, achieving an accuracy of93%,precision of90%, recall of 90. 52%, and an F1-score of92%. These results highlight the algorithm's effectiveness in tackling language challenges within specific genres. Furthermore, the research supports the Sustainable Development Goals (SDGs) by promoting linguistic diversity and advancing inclusive language technologies. The study also provides valuable insights into Cebuano's linguistic characteristics and grammatical structures, laying a solid foundation for future research in natural language processing.
Text Sentiment Analysis from University Stakeholders feedback: A Comparative Analysis of RNN architectures and Transformer based model

2024 International Conference on IT Innovation and Knowledge Discovery (ITIKD), (2025), pp. 1-6

Conference Paper | Published: January 1, 2025

View Article
Abstract
In this study, we use various RNN architectures namely, RNN, Bi-LSTM, and GRU — alongside BERT to analyze sentiment across university departments. Our aim is a comparative analysis of these models in sentiment classification within education. We collected and pre-processed textual data from multiple departments for balanced training and validation. Results showed that traditional RNNs achieved 90% accuracy, Bi-LSTM 93%, and GRU 89%. BERT, leveraging its Transformer architecture, outperformed with 94% accuracy. These findings highlight the superiority of BERT in capturing complex language patterns for sentiment analysis. This study underscores the potential of advanced neural network architectures to gain insights into departmental sentiments, informing policy decisions and educational strategies. Aligning with sustainable development goals in education, we aim to use AI models to develop effective, inclusive, and responsive educational strategies, enhancing quality and accessibility.
Analysis of C Programming Performance: A Correlational Study of Novice Programmers’ Compiler Error Logs

2022 IEEE 14th International Conference on Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment, and Management (HNICEM), (2022), pp. 1-5

Conference Paper | Published: January 1, 2022

View Article
Abstract
Computer programming is now one of the most critical competencies taught in computer courses. [1]. Students require any assistance they can get when learning programming in order to acquire the necessary abilities to excel in the field of computing [2]. This paper aims to investigate the C compiler error logs of Computer Science freshmen students. A prototype was developed and pilot-tested to obtain C source code snippets focusing on assignment statements. The dataset consisting of 1013 logs were extracted from the initial prototype then followed the data science approach of [3] for pre-processing. A Person correlational analysis was conducted on eight features to investigate the relationship between all variables in the dataset. Results of the study show that there is a strong relationship between wrong expression and operator (0.806), wrong expression and numeric value (0.794), operator and numeric value (0.663). Implications of this study is also helpful to computing instructors to improvise the delivery of their teaching pedagogy.

A Time Capsule Where Research Rests, Legends Linger, and PDFs Live Forever

Repository is the home for every research paper and capstone project created across our institution. It’s where knowledge kicks back, ideas live on, and your hard work finds the spotlight it deserves.

© 2026 Educational Innovation and Technology Hub. All Rights Reserved.