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ConFit: Improving Resume-Job Matching using Data Augmentation and Contrastive Learning

Authors :
Yu, Xiao
Zhang, Jinzhong
Yu, Zhou
Publication Year :
2024

Abstract

A reliable resume-job matching system helps a company find suitable candidates from a pool of resumes, and helps a job seeker find relevant jobs from a list of job posts. However, since job seekers apply only to a few jobs, interaction records in resume-job datasets are sparse. Different from many prior work that use complex modeling techniques, we tackle this sparsity problem using data augmentations and a simple contrastive learning approach. ConFit first creates an augmented resume-job dataset by paraphrasing specific sections in a resume or a job post. Then, ConFit uses contrastive learning to further increase training samples from $B$ pairs per batch to $O(B^2)$ per batch. We evaluate ConFit on two real-world datasets and find it outperforms prior methods (including BM25 and OpenAI text-ada-002) by up to 19% and 31% absolute in nDCG@10 for ranking jobs and ranking resumes, respectively.<br />Comment: working progress

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.16349
Document Type :
Working Paper