Proposal of Architecture And Application of Machine Learning (Ml) as A Strategy For The Reduction of University Desertion Levels Due to Academic Factors

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
José Ignacio Rodríguez Molano, Leidy Daniela Forero Zea, Yudy Fernanda Piñeros Reina
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引用次数: 3

Abstract

Introduction:  Machine Learning arises as one of the techniques of artificial intelligence, with the development of computer programs that, through algorithms, access data and use them to learn and predict results. Their application in education allows for the characterization of problems or difficulties in learning through the analysis of student performance. Objective:  Identification of applications of Machine Learning that can be applied to the educational field accompanied by a proposal of architecture for the application in an environment of personalized education. Methodology: This article begins with the review of the literature on the characteristics of Machine Learning and academic desertion, with an emphasis on the Colombian case, the Hyper-personalization and its applicability to learning methodologies. Then, a proposal of architecture in a Machine Learning environment is generated in order to mitigate the academic desertion caused by academic factors. Finally, we propose mechanisms for evaluating the proposed architecture, with a subsequent synthesis and discussion of the results. Conclusions: The construction of a Moodle architecture for the hyper-personalization of learning, is a global perspective of the representative factors proposed for the development of applications through Machine Learning. This could lead to a decrease in levels of university academic desertion because it facilitates the management of knowledge, information and adaptation through the analysis of scenarios. Originality: The proposed architecture is shown as an application of machine learning in social cases such as academic desertion, allowing the inclusion of automatic learning models with the requirements of an educational environment. Restrictions: The case for the application for the Hyper-personalization of learning uses an academic approach which can generate invalid results regarding desertion levels.
机器学习(Ml)的体系结构和应用建议,作为降低学术因素导致的大学遗弃水平的策略
引言:机器学习是人工智能的一种技术,随着计算机程序的发展,这些程序通过算法访问数据并使用它们来学习和预测结果。它们在教育中的应用允许通过分析学生的表现来描述学习中的问题或困难。目标:识别可应用于教育领域的机器学习应用,并提出个性化教育环境中应用的架构建议。方法论:本文首先回顾了关于机器学习和学术遗弃的特征的文献,重点介绍了哥伦比亚的案例、超个性化及其对学习方法的适用性。然后,提出了一个机器学习环境下的体系结构建议,以缓解学术因素造成的学术遗弃。最后,我们提出了评估所提出的体系结构的机制,并对结果进行了后续的综合和讨论。结论:为学习的超个性化构建Moodle架构,是通过机器学习开发应用程序的代表性因素的全局视角。这可能会降低大学学术遗弃的程度,因为这有助于通过情景分析来管理知识、信息和适应。独创性:所提出的架构是机器学习在学术遗弃等社会案例中的应用,允许将自动学习模型纳入教育环境的要求。限制:申请超个性化学习的案例使用了一种学术方法,这可能会产生关于逃学水平的无效结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Ingenieria Solidaria
Ingenieria Solidaria ENGINEERING, MULTIDISCIPLINARY-
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