An Ensemble Machine Learning Approach for Classifying Job Positions

Ayaz Khalid Mohammed, Abdullahi Aliyu Danlami, Dindar I. Saeed, Abdulmalik Ahmad Lawan, Adamu Hussaini, Ramadhan Kh. Mohammed
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Abstract

Machine learning is one of the promising research areas in computer science, with numerous applications in automated detection of meaningful data patterns. Several data-centric studies were conducted on evaluating competencies, detecting similar jobs and predicting salaries of various job positions. However, the hazy distinction between closely related job positions requires powerful predictive algorithms. The present study proposed an ensemble approach for accurate classification of various job positions. Accordingly, different machine learning algorithms were applied on 955 instances obtained from Glassdoor using web scraping. Furthermore, the present study classify various job positions based on average salary and other correlated explanatory variables that cover many aspects of job activities on the internet. The study result revealed the superior performance of heterogeneous ensembles in terms of precision and accuracy. The proposed data-centric approach produce strong models for researchers, recruiters, and candidates to assigned job positions and its competencies.
职位分类的集成机器学习方法
机器学习是计算机科学中有前途的研究领域之一,在自动检测有意义的数据模式方面有许多应用。几个以数据为中心的研究进行了评估能力,发现类似的工作和预测不同工作岗位的工资。然而,密切相关的工作职位之间模糊的区别需要强大的预测算法。本研究提出了一种集成方法来准确分类不同的工作岗位。因此,不同的机器学习算法应用于使用网页抓取从Glassdoor获得的955个实例。此外,本研究根据平均工资和其他相关的解释变量对各种工作职位进行分类,这些解释变量涵盖了互联网上工作活动的许多方面。研究结果表明,异构集成系统在精度和准确度方面具有优越的性能。所提出的以数据为中心的方法为研究人员、招聘人员和候选人提供了强大的模型来分配工作职位及其能力。
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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