IRAILGOct 8, 2018

Person-Job Fit: Adapting the Right Talent for the Right Job with Joint Representation Learning

arXiv:1810.04040v1103 citations
Originality Incremental advance
AI Analysis

This addresses the need for data-driven person-job matching in HR and recruitment, though it is an incremental improvement over existing qualitative methods.

The paper tackles the problem of quantitatively matching talent to job requirements by proposing PJFNN, a CNN-based model that learns joint representations from historical applications, achieving validated performance on a large-scale real-world dataset.

Person-Job Fit is the process of matching the right talent for the right job by identifying talent competencies that are required for the job. While many qualitative efforts have been made in related fields, it still lacks of quantitative ways of measuring talent competencies as well as the job's talent requirements. To this end, in this paper, we propose a novel end-to-end data-driven model based on Convolutional Neural Network (CNN), namely Person-Job Fit Neural Network (PJFNN), for matching a talent qualification to the requirements of a job. To be specific, PJFNN is a bipartite neural network which can effectively learn the joint representation of Person-Job fitness from historical job applications. In particular, due to the design of a hierarchical representation structure, PJFNN can not only estimate whether a candidate fits a job, but also identify which specific requirement items in the job posting are satisfied by the candidate by measuring the distances between corresponding latent representations. Finally, the extensive experiments on a large-scale real-world dataset clearly validate the performance of PJFNN in terms of Person-Job Fit prediction. Also, we provide effective data visualization to show some job and talent benchmark insights obtained by PJFNN.

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