Hwang, Wu-Yuin. Developing eternal learning model trainer system to support continuous knowledge integration and cognitive growth. (). King Mongkut's University of Technology North Bangkok. Central Library. : , 2024.
Developing eternal learning model trainer system to support continuous knowledge integration and cognitive growth
Abstract:
This study introduces and evaluates the Eternal
Learning Model Trainer System (ELMTS), a pioneering
approach in data processing and model generation designed to
transcend the limitations of human knowledge sharing. ELMTS
uses speech-to-text and social media mining together to create
detailed digital profiles from real-life and online activities,
improving data integration and model accuracy for new ways of
continuous knowledge sharing. Moreover, by employing the
robust algorithms of GPT 3.5, ELMTS constructs detailed
digital profiles, analyzing and interpreting data to recognize
individual patterns, preferences, and knowledge areas. This
leads to a Question and Answer (QnA) system that acts like a
digital twin, reflecting the knowledge and experiences of its
human counterpart. The system's performance, evaluated
through metrics such as correctness accuracy, relevance,
completeness, and linguistic accuracy, displayed significant
improvement post-user enhancements, indicating enhanced
precision in data handling and improved response quality. User
feedback further underscored ELMTS's effectiveness in aspects
like adaptability, decision-making, and personal growth while
pointing out challenges in information overload and ethical
concerns, thus shaping future refinements for the system.
ELMTS aims to preserve individual wisdom and contribute to
the collective human intellect, offering a novel, sustainable
approach to knowledge sharing and learning. This research is
crucial to realizing a more efficient, user-centric, and accurate
knowledge-sharing platform.
King Mongkut's University of Technology North Bangkok. Central Library
Address:
BANGKOK
Email:
library@kmutnb.ac.th
Created:
2024
Modified:
2025-05-26
Issued:
2025-05-26
บทความ/Article
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BibliograpyCitation :
In IEEE Thailand Section (IEEE Computer Society Thailand Chapter) and Prince of Songkla University. College of Computing. The 21st International Joint Conference on Computer Science and Software Engineering (JCSSE 2024)) (pp.217-223). Phuket : Prince of Songkla University