使用机器学习来预测高中生的就业能力——一个案例研究

Aarushi Dubey, M. Mani
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引用次数: 6

摘要

在本文中,我们探索了使用监督机器学习模型来预测本地企业中学生兼职工作的就业能力。我们进一步比较了本分析中使用的训练模型的性能。实证结果表明,利用地方企业对高中生就业能力进行预测是可行的,预测精度较高。经过训练的预测模型在更大的数据集上表现更好,准确率高达93%。
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Using Machine Learning to Predict High School Student Employability – A Case Study
In this paper, we explore the use of supervised machine learning models to predict the employability of high school students with local businesses for part-time jobs. We further compare the performance of trained models used in this analysis to one another. Empirical results show that it is possible to predict the employability of high school students with local businesses with high-predictive accuracies. The trained predictive models perform better with larger dataset, with up to 93% accuracy.
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