毕业生职场偏好分析

Sin Yin Ong, Choo Yee Ting, Hui Ngo Goh, Albert Quek, Chin Leei Cham
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引用次数: 0

摘要

大学毕业生在完成学业后往往发现很难找到工作。有鉴于此,研究人员提出了各种解决方案来应对这一挑战。然而,大部分工作主要集中在学术概况和个性特征上;很少有人强调工作场所位置特征的重要性。为了应对这一挑战,本研究采用了特征选择和机器学习方法,帮助毕业生根据自己的偏好和首选位置确定理想的公司类型和行业。本研究使用的数据来源于高等教育部毕业生追踪研究的数据,专门针对2382名多媒体大学(MMU)学生毕业后的就业情况。为了提取与此分析相关的进一步特征,开发了针对公司和毕业生所在地的额外分析数据集。特征选择用于确定影响毕业生理想行业工作选择的十大预测因素。在工作场所分析范围内,采用决策树分析、随机森林模型选择、朴素贝叶斯分类方法、支持向量机和k近邻算法等多种分析方法进行比较评价。值得注意的是,本研究的结果表明,与我们研究工作的项目生命周期阶段使用的其他预测模型相比,使用随机森林算法在预测就业状况方面的准确率为99.40%,预测公司类型的准确率为66.60%,最后预测公司部门的准确率为30.80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Workplace Preference Analytics Among Graduates
Graduates often find themselves difficult to secure a job after completing their education at universities or colleges. In this light, researchers have proposed various solutions to address this challenge. However, most of the work has largely focused on academic profile and personality traits; very few have highlighted the importance of workplace location characteristics. To address this challenge, this study has employed feature selection and machine learning approach to help graduates identify desired company type and sector based on their preferences and preferred location. The data used in this study was obtained from the Ministry of Higher Education Graduates Tracer Study's data, specifically for 2382 Multimedia University (MMU) students' employment situation upon graduating. Additional analytical datasets focusing on company and graduate locations were developed in order to extract further features relevant for this analysis. Feature selection was used to identify top-10 predictors that influence the selection of jobs in graduates' desired sectors. Various analytics methods such as Decision Tree Analysis, Random Forest Model selection, Naive Bayes Classification Method, Support Vector Machines and K-Nearest Neighbor Algorithms were employed for comparative evaluations within the workplace analytics scope. Notably so, results from this study demonstrate that using Random Forest Algorithm resulted in better performance in predicting employment status with an accuracy rate of 99.40%, predicting company type with 66.60% and lastly predicting company sector with 30.80% when compared to other predictive models utilized during our research work's project lifecycle phase.
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