A Model for Mapping Graduates’ Skills to Industry Roles: Machine Learning Architecture

Fullgence Mwachoo Mwakondo, M. Mvurya
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Abstract

This paper presents a machine learning architecture of a hierarchical model for mapping skills to industry roles. Currently, researchers have been approaching the problem of selecting industry roles for potential employees using flat and top-down methods. Practically, top-down approach is not reliable because it negates the natural mobility of employees in the occupational industry role hierarchy while flat approach does not take advantage of not only the easier learning property of hierarchical approach but also the local information of parent child relationship for better results. The machine learning architecture has been an attempt to address this gap using experimental research design. The mapping model consists of a collection of objects that are hierarchically arranged to progressively group industry role constructs before applying bottom-up approach to select the best. The mapping begins by first selecting the most promising sub-objects at the lower levels before passing this information to the higher levels of the hierarchy to select the most promising functional (main competence), proficiency and specialty (specific competence) objects and eventually the respective constructs.  The end product is an effective machine learning architecture of a model for mapping graduates’ skills to industry roles with relevant attributes to easily work with in the academia and that correctly reflects the hierarchy of industry roles. Findings reveal while SVM (67%) optimizes the model’s accuracy better than naïve Bayes (57%), on the same benchmark dataset the model recorded better performance (85%) than reported performance (82%) in the benchmark model. The findings will benefit industry by getting evaluation tool for revealing information on graduate’s suitability for employment which they can use for decision making when filtering candidates for interview. Besides, this will provide researchers better understanding of the gap between the academia and industry and can use this information to plan on how to bridge the gap using the mapping model. Lastly, this will attempt to reduce both low job satisfaction and long-term unemployment that is one of the causes of social and economic pain both in Kenya and around the world. However, this paper recommends testing this approach with other alternative machine learning techniques as well as other alternative industry domains.
将毕业生技能映射到行业角色的模型:机器学习架构
本文提出了一个层次模型的机器学习架构,用于将技能映射到行业角色。目前,研究人员一直在使用扁平和自上而下的方法来解决为潜在员工选择行业角色的问题。实际上,自顶向下的方法否定了职业行业角色层级中员工的自然流动性,因此并不可靠,而扁平化的方法既没有利用层级方法易于学习的特性,也没有利用亲子关系的局部信息来获得更好的结果。机器学习架构一直试图通过实验研究设计来解决这一差距。映射模型由一组对象组成,在应用自底向上的方法选择最佳对象之前,这些对象被分层排列以逐步分组行业角色构造。映射开始于首先在较低层次选择最有希望的子对象,然后将该信息传递到层次结构的较高层次,以选择最有希望的功能(主要能力)、熟练程度和专业(特定能力)对象,最后是各自的构念。最终产品是一个有效的机器学习架构模型,用于将毕业生的技能映射到具有相关属性的行业角色,以便在学术界轻松工作,并正确反映行业角色的层次结构。研究结果显示,虽然支持向量机(67%)优化模型的准确性优于naïve贝叶斯(57%),但在相同的基准数据集上,模型记录的性能(85%)优于基准模型中报告的性能(82%)。该研究结果将使行业受益,因为它提供了一种评估工具,可以揭示毕业生是否适合就业,这些工具可以用于筛选面试候选人的决策。此外,这将使研究人员更好地了解学术界和工业界之间的差距,并可以利用这些信息来规划如何使用映射模型弥合差距。最后,这将试图减少低工作满意度和长期失业,这是肯尼亚和世界各地社会和经济痛苦的原因之一。然而,本文建议使用其他替代机器学习技术以及其他替代行业领域来测试这种方法。
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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