Domain adaptation for person-job fit with transferable deep global match network

S Bian, WX Zhao, Y Song, T Zhang… - Proceedings of the 2019 …, 2019 - aclanthology.org
Proceedings of the 2019 conference on empirical methods in natural …, 2019aclanthology.org
Person-job fit has been an important task which aims to automatically match job positions
with suitable candidates. Previous methods mainly focus on solving the match task in single-
domain setting, which may not work well when labeled data is limited. We study the domain
adaptation problem for person-job fit. We first propose a deep global match network for
capturing the global semantic interactions between two sentences from a job posting and a
candidate resume respectively. Furthermore, we extend the match network and implement …
Abstract
Person-job fit has been an important task which aims to automatically match job positions with suitable candidates. Previous methods mainly focus on solving the match task in single-domain setting, which may not work well when labeled data is limited. We study the domain adaptation problem for person-job fit. We first propose a deep global match network for capturing the global semantic interactions between two sentences from a job posting and a candidate resume respectively. Furthermore, we extend the match network and implement domain adaptation in three levels, sentence-level representation, sentence-level match, and global match. Extensive experiment results on a large real-world dataset consisting of six domains have demonstrated the effectiveness of the proposed model, especially when there is not sufficient labeled data.
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