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Hierarchical Classification of Transversal Skills in Job Advertisements Based on Sentence Embeddings

Florin Leon, Marius Gavrilescu, Sabina-Adriana Floria, Alina Adriana Minea

2024Information12 citationsDOIOpen Access PDF

Abstract

This paper proposes a classification methodology aimed at identifying correlations between job ad requirements and transversal skill sets, with a focus on predicting the necessary skills for individual job descriptions using a deep learning model. The approach involves data collection, preprocessing, and labeling using ESCO (European Skills, Competences, and Occupations) taxonomy. Hierarchical classification and multi-label strategies are used for skill identification, while augmentation techniques address data imbalance, enhancing model robustness. A comparison between results obtained with English-specific and multi-language sentence embedding models reveals close accuracy. The experimental case studies detail neural network configurations, hyperparameters, and cross-validation results, highlighting the efficacy of the hierarchical approach and the suitability of the multi-language model for the diverse European job market. Thus, a new approach is proposed for the hierarchical classification of transversal skills from job ads.

Topics & Concepts

Transversal (combinatorics)SentenceComputer scienceNatural language processingArtificial intelligencePsychologyMathematicsMathematical analysisSentiment Analysis and Opinion MiningTopic ModelingAdvanced Text Analysis Techniques
Hierarchical Classification of Transversal Skills in Job Advertisements Based on Sentence Embeddings | Litcius