ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning
Nowadays, it is popular to utilize online recruitment services for talent recruitment and job recommendation. Given the vast amounts of online talent profiles and job-posts, it is labor-intensive and exhausted for recruiters to manually select only a few potential candidates for further consideratio...
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sg-ntu-dr.10356-1529872021-10-27T06:14:01Z ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning Luo, Yong Zhang, Huaizheng Wen, Yonggang Zhang, Xinwen School of Computer Science and Engineering The 28th ACM International Conference on Information and Knowledge Management Engineering::Computer science and engineering::Information systems::Information storage and retrieval Resume Job-post Fit Talent Recruitment Nowadays, it is popular to utilize online recruitment services for talent recruitment and job recommendation. Given the vast amounts of online talent profiles and job-posts, it is labor-intensive and exhausted for recruiters to manually select only a few potential candidates for further consideration, and also nontrivial for talents to find the most matched job positions. Recently, some deep learning-based approaches are developed to automatically matching the talent resumes and job requirements, and have achieved encouraging performance. In this paper, we propose a novel framework that targets the same task, but integrate different types of information in a more sophisticated way and introduce adversarial learning to learn more expressive representation. In addition, we build a dataset for model evaluation and the effectiveness of our framework is demonstrated by extensive experiments. Building and Construction Authority (BCA) Info-communications Media Development Authority (IMDA) National Research Foundation (NRF) This work is supported by Singapore NRF2015ENCGDCR01001- 003, administrated via IMDA and NRF2015ENCGBICRD001- 012, administrated via BCA. 2021-10-27T06:14:01Z 2021-10-27T06:14:01Z 2019 Conference Paper Luo, Y., Zhang, H., Wen, Y. & Zhang, X. (2019). ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning. The 28th ACM International Conference on Information and Knowledge Management, 1101-1110. https://dx.doi.org/10.1145/3357384.3357899 9781450369763 https://hdl.handle.net/10356/152987 10.1145/3357384.3357899 2-s2.0-85075444519 1101 1110 en NRF2015ENCGDCR01001- 003 NRF2015ENCGBICRD001- 012 © 2019 Association for Computing Machinery. All rights reserved. |
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Engineering::Computer science and engineering::Information systems::Information storage and retrieval Resume Job-post Fit Talent Recruitment Luo, Yong Zhang, Huaizheng Wen, Yonggang Zhang, Xinwen ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
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Nowadays, it is popular to utilize online recruitment services for talent recruitment and job recommendation. Given the vast amounts of online talent profiles and job-posts, it is labor-intensive and exhausted for recruiters to manually select only a few potential candidates for further consideration, and also nontrivial for talents to find the most matched job positions. Recently, some deep learning-based approaches are developed to automatically matching the talent resumes and job requirements, and have achieved encouraging performance. In this paper, we propose a novel framework that targets the same task, but integrate different types of information in a more sophisticated way and introduce adversarial learning to learn more expressive representation. In addition, we build a dataset for model evaluation and the effectiveness of our framework is demonstrated by extensive experiments. |
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School of Computer Science and Engineering |
author_facet |
School of Computer Science and Engineering Luo, Yong Zhang, Huaizheng Wen, Yonggang Zhang, Xinwen |
format |
Conference or Workshop Item |
author |
Luo, Yong Zhang, Huaizheng Wen, Yonggang Zhang, Xinwen |
author_sort |
Luo, Yong |
title |
ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
title_short |
ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
title_full |
ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
title_fullStr |
ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
title_full_unstemmed |
ResumeGAN : an optimized deep representation learning framework for talent-job fit via adversarial learning |
title_sort |
resumegan : an optimized deep representation learning framework for talent-job fit via adversarial learning |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/152987 |
_version_ |
1715201517139525632 |