A Novel Approach for Learning How to Automatically Match Job Offers and Candidate Profiles

Automatic matching of job offers and job candidates is a major problem for a number of organizations and job applicants that if it were successfully addressed could have a positive impact in many countries around the world. In this context, it is widely accepted that semi-automatic matching algorith...

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Veröffentlicht in:Information systems frontiers 2020-12, Vol.22 (6), p.1265-1274
Hauptverfasser: Martinez-Gil, Jorge, Paoletti, Alejandra Lorena, Pichler, Mario
Format: Artikel
Sprache:eng
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Zusammenfassung:Automatic matching of job offers and job candidates is a major problem for a number of organizations and job applicants that if it were successfully addressed could have a positive impact in many countries around the world. In this context, it is widely accepted that semi-automatic matching algorithms between job and candidate profiles would provide a vital technology for making the recruitment processes faster, more accurate and transparent. In this work, we present our research towards achieving a realistic matching approach for satisfactorily addressing this challenge. This novel approach relies on a matching learning solution aiming to learn from past solved cases in order to accurately predict the results in new situations. An empirical study shows us that our approach is able to beat solutions with no learning capabilities by a wide margin.
ISSN:1387-3326
1572-9419
DOI:10.1007/s10796-019-09929-7