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Main Authors: Lee, Hyeongjae, Hong, Inho
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.17931
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author Lee, Hyeongjae
Hong, Inho
author_facet Lee, Hyeongjae
Hong, Inho
contents Assessing the potential influence of Vocational Education and Training (VET) courses on creating job opportunities and nurturing work skills has been considered challenging due to the ambiguity in defining their complex relationships and connections with the local economy. Here, we quantify the potential influence of VET courses and explain it with future economy and specialization by constructing a network of more than 17,000 courses, jobs, and skills in Singapore's SkillsFuture data based on their text similarities captured by a text embedding technique, Sentence Transformer. We find that VET courses associated with Singapore's 4th Industrial Revolution economy demonstrate higher influence than those related to other future economies. The course influence varies greatly across different sectors, attributed to the level of specificity of the skills covered. Lastly, we show a notable concentration of VET supply in certain occupation sectors requiring general skills, underscoring a disproportionate distribution of education supply for the labor market.
format Preprint
id arxiv_https___arxiv_org_abs_2503_17931
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantifying the influence of Vocational Education and Training with text embedding and similarity-based networks
Lee, Hyeongjae
Hong, Inho
Physics and Society
Computers and Society
Assessing the potential influence of Vocational Education and Training (VET) courses on creating job opportunities and nurturing work skills has been considered challenging due to the ambiguity in defining their complex relationships and connections with the local economy. Here, we quantify the potential influence of VET courses and explain it with future economy and specialization by constructing a network of more than 17,000 courses, jobs, and skills in Singapore's SkillsFuture data based on their text similarities captured by a text embedding technique, Sentence Transformer. We find that VET courses associated with Singapore's 4th Industrial Revolution economy demonstrate higher influence than those related to other future economies. The course influence varies greatly across different sectors, attributed to the level of specificity of the skills covered. Lastly, we show a notable concentration of VET supply in certain occupation sectors requiring general skills, underscoring a disproportionate distribution of education supply for the labor market.
title Quantifying the influence of Vocational Education and Training with text embedding and similarity-based networks
topic Physics and Society
Computers and Society
url https://arxiv.org/abs/2503.17931