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Keywords:

Generative Syntactic Analysis, TensorFlow, Learning Rates, Chatbot System, C++ Programming Education

Generative Syntactic Analysis Using Tensorflow

Authors

Loreto B. Damasco Jr.1 | Jim Jonathan C. Decripito2
College of Computing Studies, University of St. La Salle, Philippines 1 College of Computing Studies, University of St. La Salle, Philippines 2

Abstract

This study explores generative syntactic analysis using TensorFlow, specifically applied to C++ programming education. Its dual objectives were to analyze the influence of varied learning rates on generative intelligent model performance and to evaluate the user experience of a developed chatbot system. Key findings indicate that learning rates play a critical role in model training, with a rate of 0.01 consistently yielding superior perplexity and BLEU scores compared to a rate of 0.1, while also acknowledging the importance of dataset and task specificity. User feedback revealed a largely positive reception (4.2/5) for the chatbot system, attributed to its intuitive interface and ease of use. However, opportunities for enhancement were identified, particularly in aligning terminology with industry standards and improving documentation. This research significantly contributes to AI-assisted education by offering insights into both technical advancements and user-centric refinements for intelligent generative models.

Article Details

Published

2025-08-20

Section

Articles

License

Copyright (c) 2025 International Journal of Engineering and Computer Science Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

How to Cite

Generative Syntactic Analysis Using Tensorflow. (2025). International Journal of Engineering and Computer Science, 14(08), 27655-27661. https://doi.org/10.18535/ijecs.v14i08.5216