Abstract
AbstractThe value assessment of job skills is important for companies to select and retain the right talent. However, there are few quantitative ways available for this assessment. Therefore, we propose a data-driven solution to assess skill value from a market-oriented perspective. Specifically, we formulate the task of job skill value assessment as a Salary-Skill Value Composition Problem, where each job position is regarded as the composition of a set of required skills attached with the contextual information of jobs, and the job salary is assumed to be jointly influenced by the context-aware value of these skills. Then, we propose an enhanced neural network with cooperative structure, namely Salary-Skill Composition Network (SSCN), to separate the job skills and measure their value based on the massive job postings. Experiments show that SSCN can not only assign meaningful value to job skills, but also outperforms benchmark models for job salary prediction.
Publisher
Springer Science and Business Media LLC
Subject
General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry
Reference41 articles.
1. Ng, T. W. & Feldman, D. C. A conservation of resources perspective on career hurdles and salary attainment. J. Vocat. Behav. 85, 156–168 (2014).
2. Dix-Carneiro, R. & Kovak, B. K. Trade liberalization and the skill premium: a local labor markets approach. Am. Econ. Rev. 105, 551–57 (2015).
3. Burstein, A. & Vogel, J. International trade, technology, and the skill premium. J. Political Econ. 125, 1356–1412 (2017).
4. Xu, T., Zhu, H., Zhu, C., Li, P. & Xiong, H. Measuring the popularity of job skills in recruitment market: A multi-criteria approach. In AAAI 2018 (2018).
5. Wu, X. et al. Trend-aware tensor factorization for job skill demand analysis. In IJCAI 2019 (2019).
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