Analysis of Soft Skills and Job Level with Data Science: A Case for Graduates of a Private University

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-02-13 DOI:10.3390/informatics10010023
Sofía Ramos-Pulido, N. Hernández-Gress, Gabriela Torres Delgado
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Abstract

This study shows the significant features predicting graduates’ job levels, particularly high-level positions. Moreover, it shows that data science methodologies can accurately predict graduate outcomes. The dataset used to analyze graduate outcomes was derived from a private educational institution survey. The original dataset contains information on 17,898 graduates and approximately 148 features. Three machine learning algorithms, namely, decision trees, random forest, and gradient boosting, were used for data analysis. These three machine learning models were compared with ordinal regression. The results indicate that gradient boosting is the best predictive model, which is 6% higher than the ordinal regression accuracy. The SHapley Additive exPlanations (SHAP), a novel methodology to extract the significant features of different machine learning algorithms, was then used to extract the most important features of the gradient boosting model. Current salary is the most important feature in predicting job levels. Interestingly, graduates who realized the importance of communication skills and teamwork to be good leaders also had higher job positions. Finally, general relevant features to predict job levels include the number of people directly in charge, company size, seniority, and satisfaction with income.
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数据科学对软技能和工作水平的影响分析:以某私立大学毕业生为例
这项研究显示了预测毕业生工作水平的显著特征,尤其是高级职位。此外,它还表明,数据科学方法可以准确预测毕业生的成绩。用于分析毕业生成绩的数据集来自一项私立教育机构的调查。原始数据集包含17898名毕业生的信息和大约148个特征。三种机器学习算法,即决策树、随机森林和梯度提升,用于数据分析。将这三个机器学习模型与有序回归进行了比较。结果表明,梯度增强是最好的预测模型,其准确率比有序回归高6%。SHapley加性规划(SHAP)是一种提取不同机器学习算法重要特征的新方法,然后用于提取梯度增强模型的最重要特征。当前工资是预测工作水平的最重要特征。有趣的是,那些意识到沟通技巧和团队合作对成为优秀领导者的重要性的毕业生也有更高的职位。最后,预测工作水平的一般相关特征包括直接负责人的数量、公司规模、资历和对收入的满意度。
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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