An Improved Apriori Algorithm for Association Rule Mining in Employability Analysis

IF 1 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Fang Peng, Yuhui Sun, Zigen Chen, Jing Gao
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引用次数: 0

Abstract

: The wide application of emerging advanced technologies causes significant changes in the development trend of the employment market. The lack of flexible and easy-to-implement analysis methods challenges general maritime education practitioners to understand the developing trends. This research proposed the improved Apriori algorithm to explore employment preference by identifying the association rule of the employability indicators and the employment status. The candidate generation methods are optimised based on the questionnaire design to generate fewer candidates. The minimum support value is automatically generated to reduce the reliance on analysis expertise and improve accuracy. To validate the algorithm, a questionnaire for the maritime graduate is used to collect employment data to test the efficiency and capability of the improved algorithm. The computation time for different data set sizes shows that the improvement could improve the algorithm's effectiveness. The algorithm also successfully identifies significant employment preference that certain employment types emphasise specific employability skills, such as responsibility and core professional skills. The results suggest that the improved A algorithm could reduce the computing burden and identify the employment preference from questionnaire data. This research provides easy-to-use and flexible analysis tools, which could reduce the computing expertise required for education practitioners.
就业能力分析中关联规则挖掘的改进Apriori算法
新兴先进技术的广泛应用使就业市场的发展趋势发生了重大变化。缺乏灵活且易于实施的分析方法对一般海事教育从业者了解发展趋势提出了挑战。本研究提出了改进的Apriori算法,通过识别就业能力指标与就业状况的关联规则来探索就业偏好。在问卷设计的基础上,优化候选生成方法,减少候选生成量。最小支持值自动生成,以减少对分析专家的依赖并提高准确性。为了验证该算法的有效性,通过对海事毕业生的问卷调查来收集就业数据,以检验改进算法的效率和能力。不同数据集规模下的计算时间表明,改进后的算法可以提高算法的有效性。该算法还成功地识别出重要的就业偏好,即某些就业类型强调特定的就业技能,如责任和核心专业技能。结果表明,改进的A算法可以减少计算负担,并从问卷数据中识别就业偏好。这项研究提供了易于使用和灵活的分析工具,可以减少对教育从业者的计算专业知识的要求。
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来源期刊
Tehnicki Vjesnik-Technical Gazette
Tehnicki Vjesnik-Technical Gazette ENGINEERING, MULTIDISCIPLINARY-
CiteScore
1.90
自引率
11.10%
发文量
270
审稿时长
12.6 months
期刊介绍: The journal TEHNIČKI VJESNIK - TECHNICAL GAZETTE publishes scientific and professional papers in the area of technical sciences (mostly from mechanical, electrical and civil engineering, and also from their boundary areas). All articles have undergone peer review and upon acceptance are permanently free of all restrictions on access, for everyone to read and download. For all articles authors will be asked to pay a publication fee prior to the article appearing in the journal. However, this fee only to be paid after the article has been positively reviewed and accepted for publishing. All details can be seen at http://www.tehnicki-vjesnik.com/web/public/page First year of publication: 1994 Frequency (annually): 6
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