Back to Search Start Over

Improving Relation Extraction by Leveraging Knowledge Graph Link Prediction

Authors :
Stoica, George
Platanios, Emmanouil Antonios
Póczos, Barnabás
Publication Year :
2020

Abstract

Relation extraction (RE) aims to predict a relation between a subject and an object in a sentence, while knowledge graph link prediction (KGLP) aims to predict a set of objects, O, given a subject and a relation from a knowledge graph. These two problems are closely related as their respective objectives are intertwined: given a sentence containing a subject and an object o, a RE model predicts a relation that can then be used by a KGLP model together with the subject, to predict a set of objects O. Thus, we expect object o to be in set O. In this paper, we leverage this insight by proposing a multi-task learning approach that improves the performance of RE models by jointly training on RE and KGLP tasks. We illustrate the generality of our approach by applying it on several existing RE models and empirically demonstrate how it helps them achieve consistent performance gains.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.04812
Document Type :
Working Paper