Litcius/Paper detail

Information Extraction From Free-Form CV Documents in Multiple Languages

Davor Vukadin, Adrian Satja Kurdija, Goran Delač, Marin Šilić

2021IEEE Access21 citationsDOIOpen Access PDF

Abstract

This paper proposes two natural language processing models for extracting useful information from multilingual, unstructured (free form) CV documents. The model identifies the relevant document sections (personal information, education, employment, etc.) and the corresponding specific information at the lower hierarchy level (names, addresses, roles, skill competences, etc.). Our approach employs the transformer architecture and its multilingual implementation of the encoder part in the form of the BERT language model. The models are trained and tested on a large, manually annotated CV dataset, achieving high scores on standard accuracy measures. The proposed models exhibit important properties of end-to-end training and interpretability, which was investigated by visualizing the model attention and its vector representations.

Topics & Concepts

Computer scienceInterpretabilityNatural language processingTransformerLanguage modelInformation extractionArtificial intelligenceInformation retrievalEncoderArchitectureClefNatural languageHierarchyManagementOperating systemMarket economyArtEconomicsQuantum mechanicsVisual artsTask (project management)PhysicsVoltageTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
Information Extraction From Free-Form CV Documents in Multiple Languages | Litcius