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Leveraging Search History for Improving Person-Job Fit (2203.14232v1)

Published 27 Mar 2022 in cs.IR

Abstract: As the core technique of online recruitment platforms, person-job fit can improve hiring efficiency by accurately matching job positions with qualified candidates. However, existing studies mainly focus on the recommendation scenario, while neglecting another important channel for linking positions with job seekers, i.e. search. Intuitively, search history contains rich user behavior in job seeking, reflecting important evidence for job intention of users. In this paper, we present a novel Search History enhanced Person-Job Fit model, named as SHPJF. To utilize both text content from jobs/resumes and search histories from users, we propose two components with different purposes. For text matching component, we design a BERT-based text encoder for capturing the semantic interaction between resumes and job descriptions. For intention modeling component, we design two kinds of intention modeling approaches based on the Transformer architecture, either based on the click sequence or query text sequence. To capture underlying job intentions, we further propose an intention clustering technique to identify and summarize the major intentions from search logs. Extensive experiments on a large real-world recruitment dataset have demonstrated the effectiveness of our approach.

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Authors (7)
  1. Yupeng Hou (33 papers)
  2. Xingyu Pan (11 papers)
  3. Wayne Xin Zhao (196 papers)
  4. Shuqing Bian (7 papers)
  5. Yang Song (299 papers)
  6. Tao Zhang (481 papers)
  7. Ji-Rong Wen (299 papers)
Citations (8)

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