Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence

Integrating artificial intelligence in education can revolutionize how educational resources are generated, and assessments are conducted. However, current automated systems often struggle with precision, relevance, and usability issues, particularly in adapting to the specific needs of diverse educ...

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Main Authors: William Villegas-Ch, Jaime Govea, Roque Albuja, Diego Buenano-Fernandez, Aracely Mera-Navarrete
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10758621/
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author William Villegas-Ch
Jaime Govea
Roque Albuja
Diego Buenano-Fernandez
Aracely Mera-Navarrete
author_facet William Villegas-Ch
Jaime Govea
Roque Albuja
Diego Buenano-Fernandez
Aracely Mera-Navarrete
author_sort William Villegas-Ch
collection DOAJ
description Integrating artificial intelligence in education can revolutionize how educational resources are generated, and assessments are conducted. However, current automated systems often struggle with precision, relevance, and usability issues, particularly in adapting to the specific needs of diverse educational contexts. This study addresses these challenges by developing and refining an automated syllabus generation and academic evaluation system, focusing on continuous user feedback and iterative adjustments. Our approach involved optimizing text processing algorithms to improve the system’s contextual understanding and incorporating customization options to align the generated content with course-specific objectives. The results were significant: the system’s evaluation precision increased from 78.5% to 89.7% over six months, and the relevance of the generated syllabi improved from 82.0% to 90.5%. Usability also saw a notable enhancement, with user satisfaction scores rising by 21.1%. These findings demonstrate that an adaptive, user-centered approach to education automation can effectively overcome current systems’ limitations, leading to more accurate, relevant, and user-friendly tools. By focusing on the iterative improvement of the system based on continuous feedback, we have developed a solution that not only meets the immediate needs of educators and students but also has the potential to scale and adapt to future educational challenges.
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spelling doaj-art-6f47a2a890684cce9ec53b6cceb77f302024-11-26T00:01:36ZengIEEEIEEE Access2169-35362024-01-011217339017340910.1109/ACCESS.2024.350353210758621Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial IntelligenceWilliam Villegas-Ch0https://orcid.org/0000-0002-5421-7710Jaime Govea1Roque Albuja2Diego Buenano-Fernandez3https://orcid.org/0000-0001-8123-2783Aracely Mera-Navarrete4Escuela de Ingeniería en Ciberseguridad, FICA, Universidad de Las Américas, Quito, EcuadorEscuela de Ingeniería en Ciberseguridad, FICA, Universidad de Las Américas, Quito, EcuadorEscuela de Posgrados, Maestría en Derecho Digital, Universidad de Las Américas, Quito, EcuadorEscuela de Posgrados, Maestría en Derecho Digital, Universidad de Las Américas, Quito, EcuadorDepartamento de Sistemas, Universidad Internacional del Ecuador, Quito, EcuadorIntegrating artificial intelligence in education can revolutionize how educational resources are generated, and assessments are conducted. However, current automated systems often struggle with precision, relevance, and usability issues, particularly in adapting to the specific needs of diverse educational contexts. This study addresses these challenges by developing and refining an automated syllabus generation and academic evaluation system, focusing on continuous user feedback and iterative adjustments. Our approach involved optimizing text processing algorithms to improve the system’s contextual understanding and incorporating customization options to align the generated content with course-specific objectives. The results were significant: the system’s evaluation precision increased from 78.5% to 89.7% over six months, and the relevance of the generated syllabi improved from 82.0% to 90.5%. Usability also saw a notable enhancement, with user satisfaction scores rising by 21.1%. These findings demonstrate that an adaptive, user-centered approach to education automation can effectively overcome current systems’ limitations, leading to more accurate, relevant, and user-friendly tools. By focusing on the iterative improvement of the system based on continuous feedback, we have developed a solution that not only meets the immediate needs of educators and students but also has the potential to scale and adapt to future educational challenges.https://ieeexplore.ieee.org/document/10758621/Automated educational systemssyllabus generationAI in educationevaluation precision
spellingShingle William Villegas-Ch
Jaime Govea
Roque Albuja
Diego Buenano-Fernandez
Aracely Mera-Navarrete
Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
IEEE Access
Automated educational systems
syllabus generation
AI in education
evaluation precision
title Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
title_full Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
title_fullStr Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
title_full_unstemmed Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
title_short Optimizing Automated Educational Systems: Adaptive Syllabus Generation and Precise Assessment Using Artificial Intelligence
title_sort optimizing automated educational systems adaptive syllabus generation and precise assessment using artificial intelligence
topic Automated educational systems
syllabus generation
AI in education
evaluation precision
url https://ieeexplore.ieee.org/document/10758621/
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