CareerRec: A Machine Learning Approach to Career Path Choice for Information Technology Graduates

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Abstract

Enterprises rely more and more on well-qualified and highly specialized IT professionals. Although the increasing availability of IT jobs is a good indicator for IT graduates, they nonetheless may find themselves confused about the most appropriate career for their future. In this paper, a recommendation system called CareerRec is proposed, which uses machine learning algorithms to help IT graduates select a career path based on their skills. CareerRec was trained and tested using a dataset of 2255 employees in the IT sector in Saudi Arabia. We conducted a performance comparison between five machine learning algorithms to assess their accuracy for predicting the best-suited career path among 3 classes. Our experiments demonstrate that the XGBoost algorithm outperforms other models and gives the highest accuracy (70.47%).

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CITATION STYLE

APA

Al-Dossari, H., Al-Qahtani, Z., Nughaymish, F. A., Alkahlifah, M., & Alqahtani, A. (2020). CareerRec: A Machine Learning Approach to Career Path Choice for Information Technology Graduates. Engineering, Technology and Applied Science Research, 10(6), 6589–6596. https://doi.org/10.48084/etasr.3821

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