Litcius/Paper detail

Empirical Evaluation of Pretraining Strategies for Supervised Entity Linking

Thibault Févry, Nicholas FitzGerald, Livio Baldini Soares, Tom Kwiatkowski

2020Automated Knowledge Base Construction15 citations

Abstract

In this work, we present an entity linking model which combines a Transformer architecture with large scale pretraining from Wikipedia links. Our model achieves the state-of-the-art on two commonly used entity linking datasets: 96.7% on CoNLL and 94.9% on TAC-KBP. We present detailed analyses to understand what design choices are important for entity linking, including choices of negative entity candidates, Transformer architecture, and input perturbations. Lastly, we present promising results on more challenging settings such as end-to-end entity linking and entity linking without in-domain training data.

Topics & Concepts

Computer scienceTransformerArchitectureEntity linkingNatural language processingArtificial intelligenceNamed-entity recognitionLabeled dataMachine learningInformation retrievalKnowledge baseEconomicsQuantum mechanicsPhysicsTask (project management)Visual artsManagementArtVoltageTopic ModelingWikis in Education and CollaborationNatural Language Processing Techniques