Zero-Shot Recommendation AI Models for Efficient Job–Candidate Matching in Recruitment Process
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Published:2024-03-20
Issue:6
Volume:14
Page:2601
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ISSN:2076-3417
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Container-title:Applied Sciences
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language:en
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Short-container-title:Applied Sciences
Author:
Kurek Jarosław12ORCID, Latkowski Tomasz1ORCID, Bukowski Michał1ORCID, Świderski Bartosz1ORCID, Łępicki Mateusz2ORCID, Baranik Grzegorz2ORCID, Nowak Bogusz2ORCID, Zakowicz Robert1ORCID, Dobrakowski Łukasz2ORCID
Affiliation:
1. Department of Artificial Intelligence, Institute of Information Technology, Warsaw University of Life Sciences, ul. Nowoursynowska 159, 02-776 Warsaw, Poland 2. Avenga IT Professionals sp. z o.o., ul. Gwiaździsta 66, 53-413 Wroclaw, Poland
Abstract
In the evolving realities of recruitment, the precision of job–candidate matching is crucial. This study explores the application of Zero-Shot Recommendation AI Models to enhance this matching process. Utilizing advanced pretrained models such as all-MiniLM-L6-v2 and applying similarity metrics like dot product and cosine similarity, we assessed their effectiveness in aligning job descriptions with candidate profiles. Our evaluations, based on Top-K Accuracy across various rankings, revealed a notable enhancement in matching accuracy compared to conventional methods. Specifically, the all-MiniLM-L6-v2 model with a chunk length of 768 exhibited outstanding performance, achieving a remarkable Top-1 accuracy of 3.35%, 55.45% for Top-100, and an impressive 81.11% for Top-500, establishing it as a highly effective tool for recruitment processes. This paper presents an in-depth analysis of these models, providing insights into their potential applications in real-world recruitment scenarios. Our findings highlight the capability of Zero-Shot Learning to address the dynamic requirements of the job market, offering a scalable, efficient, and adaptable solution for job–candidate matching and setting new benchmarks in recruitment efficiency.
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