Adaptive Model of Classification of Professions in Vocational Guidance Systems

IF 0.2 Q4 ENGINEERING, MULTIDISCIPLINARY
Andrés-Felipe Cruz-Eraso, C. González-Serrano
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引用次数: 0

Abstract

Vocational guidance is part of psychosocial development and is understood as a method that helps to determine the most appropriate profession according to the aptitudes and abilities of the student. The processes of vocational guidance are dynamic and focus on educating and favoring the decision-making process in the professional choice for a learning pathway throughout the student's life, which will benefit society in the long run. Most of the current solutions, both theoretical and applied, from Europe and North America differ when used in the Colombian context, mainly for adults, since the process of classifying professions is not accurate nor precise. In addition, there are various educational projects and evaluation systems in secondary education level institutions. At this level, the students have a changing vocational choice which implies taking into account specific characteristics of the context, also, the student profile vocational guidance determinants. The objective of this article is to describe the adaptive model of occupational classification integrated into the Intelligent Web Platform used in educational institutions in the Department of Cauca. The use of the CRISP-DM methodology allowed finding the Naive Bayes and Deep learning algorithms as those with the best performance in the classification of professions.
职业指导系统中职业分类的自适应模型
职业指导是心理社会发展的一部分,被理解为一种有助于根据学生的天赋和能力确定最合适的职业的方法。职业指导的过程是动态的,重点是在学生一生的职业选择中教育和支持决策过程,以选择学习途径,从长远来看,这将有利于社会。欧洲和北美目前的大多数解决方案,无论是理论上的还是应用上的,在哥伦比亚的情况下使用时都有所不同,主要针对成年人,因为对职业进行分类的过程既不准确也不精确。此外,中等教育机构还有各种教育项目和评估系统。在这个层面上,学生有一个不断变化的职业选择,这意味着要考虑到背景的具体特征,以及学生的职业指导决定因素。本文的目的是描述考卡大学教育机构使用的智能网络平台中集成的职业分类自适应模型。CRISP-DM方法的使用使Naive Bayes和深度学习算法成为职业分类中性能最好的算法。
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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