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Papers/RECON: Relation Extraction using Knowledge Graph Context i...

RECON: Relation Extraction using Knowledge Graph Context in a Graph Neural Network

Anson Bastos, Abhishek Nadgeri, Kuldeep Singh, Isaiah Onando Mulang', Saeedeh Shekarpour, Johannes Hoffart, Manohar Kaul

2020-09-18Relation ExtractionRelationship Extraction (Distant Supervised)
PaperPDFCode

Abstract

In this paper, we present a novel method named RECON, that automatically identifies relations in a sentence (sentential relation extraction) and aligns to a knowledge graph (KG). RECON uses a graph neural network to learn representations of both the sentence as well as facts stored in a KG, improving the overall extraction quality. These facts, including entity attributes (label, alias, description, instance-of) and factual triples, have not been collectively used in the state of the art methods. We evaluate the effect of various forms of representing the KG context on the performance of RECON. The empirical evaluation on two standard relation extraction datasets shows that RECON significantly outperforms all state of the art methods on NYT Freebase and Wikidata datasets. RECON reports 87.23 F1 score (Vs 82.29 baseline) on Wikidata dataset whereas on NYT Freebase, reported values are 87.5(P@10) and 74.1(P@30) compared to the previous baseline scores of 81.3(P@10) and 63.1(P@30).

Results

TaskDatasetMetricValueModel
Relation ExtractionNYT CorpusP@10%87.5RECON
Relation ExtractionNYT CorpusP@30%74.1RECON
Relation ExtractionNew York Times CorpusP@10%87.5RECON
Relation ExtractionNew York Times CorpusP@30%74.1RECON
Relationship Extraction (Distant Supervised)New York Times CorpusP@10%87.5RECON
Relationship Extraction (Distant Supervised)New York Times CorpusP@30%74.1RECON

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