A data mining approach to forecast students’ career placement probabilities and recommendations in the programming field

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
K. Mahboob, R. Asif, N. G. Haider
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引用次数: 0

Abstract

The career opportunities in computer programming are vast and rapidly increasing. Skilled software engineers, programmers, and developers are vigorously in demand worldwide. The capability to forecast a student's future career can be helpful in a wide variety of pedagogical practices. Data mining is becoming a more robust tool for analysis and forecasting. Therefore, to forecast career placement probabilities in the programming field, data mining classification and forecast techniques are used in this study to facilitate prospective students to make sensible career decisions. To achieve this objective, passed-out graduates' data is utilized, which comprises features like graduates' educational attainments in pre-university grades, i.e. grades of matriculation and intermediate, programming courses taught in early semesters along with the Cumulative Grade Point Average (CGPA) with the internship experience, gender, and family demographic information. Various multi-way Classification Trees are generated, which could help students to choose a branch with high career placement probabilities. From historical data, the Classification Trees have determined whether the branch is 'Good', 'Satisfactory', or 'Poor' based on the given information. The experimental findings indicate that all the features significantly influence the career placement probabilities in the programming field.
一种数据挖掘方法预测学生在编程领域的职业安置概率和建议
计算机编程的职业机会是巨大的,而且正在迅速增加。熟练的软件工程师、程序员和开发人员在全球范围内需求旺盛。预测学生未来职业的能力在各种各样的教学实践中都有帮助。数据挖掘正在成为一种更强大的分析和预测工具。因此,为了预测编程领域的职业安置概率,本研究采用了数据挖掘分类和预测技术,以便于未来的学生做出明智的职业决策。为了实现这一目标,利用了分发的毕业生数据,其中包括毕业生在大学前年级(即预科和中级)的教育程度、在前学期教授的编程课程,以及具有实习经历、性别和家庭人口统计信息的累计绩点平均值(CGPA)。生成了多种多样的分类树,可以帮助学生选择具有较高职业安置概率的分支。根据历史数据,分类树根据给定的信息确定分支是“好”、“满意”还是“差”。实验结果表明,所有特征都会显著影响编程领域的职业安置概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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76
审稿时长
40 weeks
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