SkillMatch: Evaluating Self-supervised Learning of Skill Relatedness
Decorte, Jens-Joris, Van Hautte, Jeroen, Demeester, Thomas, Develder, Chris
–arXiv.org Artificial Intelligence
Accurately modeling the relationships between skills is a crucial part of human resources processes such as recruitment and employee development. Yet, no benchmarks exist to evaluate such methods directly. We construct and release SkillMatch, a benchmark for the task of skill relatedness, based on expert knowledge mining from millions of job ads. Additionally, we propose a scalable self-supervised learning technique to adapt a Sentence-BERT model based on skill co-occurrence in job ads. This new method greatly surpasses traditional models for skill relatedness as measured on SkillMatch. By releasing SkillMatch publicly, we aim to contribute a foundation for research towards increased accuracy and transparency of skill-based recommendation systems.
arXiv.org Artificial Intelligence
Oct-7-2024
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