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Global Normalization of Convolutional Neural Networks for Joint Entity and Relation Classification

About

We introduce globally normalized convolutional neural networks for joint entity classification and relation extraction. In particular, we propose a way to utilize a linear-chain conditional random field output layer for predicting entity types and relations between entities at the same time. Our experiments show that global normalization outperforms a locally normalized softmax layer on a benchmark dataset.

Heike Adel, Hinrich Sch\"utze• 2017

Related benchmarks

TaskDatasetResultRank
Joint Entity and Relation ExtractionCONLL04
Entity F182.1
33
Entity ClassificationCoNLL04 (test)
F1 Score82.1
21
Relation ClassificationCoNLL04 (test)
F1 Score62.5
12
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