The use of natural language processing in human resource management has become of paramount importance in order to provide support for recruiting and corporate population management. This paper proposes a heuristic algorithm to solve two problems: (i) semantic matching among heterogeneous datasets storing the hard skills possessed by the company’s employees to obtain a homogeneous catalog, according to the O*NET and ESCO competence dictionaries, and (ii) inferring the employee’s soft skills with respect to his/her own declaration of interests, work experience, certifications, etc., given his/her curriculum vitae. Empirical results demonstrate that the proposed approach yields improved performance results by comparison with baseline methods available in the literature.
HR-Specific NLP for the Homogeneous Classification of Declared and Inferred Skills
RICCIARDI CELSI L;
2022-01-01
Abstract
The use of natural language processing in human resource management has become of paramount importance in order to provide support for recruiting and corporate population management. This paper proposes a heuristic algorithm to solve two problems: (i) semantic matching among heterogeneous datasets storing the hard skills possessed by the company’s employees to obtain a homogeneous catalog, according to the O*NET and ESCO competence dictionaries, and (ii) inferring the employee’s soft skills with respect to his/her own declaration of interests, work experience, certifications, etc., given his/her curriculum vitae. Empirical results demonstrate that the proposed approach yields improved performance results by comparison with baseline methods available in the literature.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.