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3 months ago

Efficient long-distance relation extraction with DG-SpanBERT

Jun Chen Robert Hoehndorf Mohamed Elhoseiny Xiangliang Zhang

Efficient long-distance relation extraction with DG-SpanBERT

Abstract

In natural language processing, relation extraction seeks to rationally understand unstructured text. Here, we propose a novel SpanBERT-based graph convolutional network (DG-SpanBERT) that extracts semantic features from a raw sentence using the pre-trained language model SpanBERT and a graph convolutional network to pool latent features. Our DG-SpanBERT model inherits the advantage of SpanBERT on learning rich lexical features from large-scale corpus. It also has the ability to capture long-range relations between entities due to the usage of GCN on dependency tree. The experimental results show that our model outperforms other existing dependency-based and sequence-based models and achieves a state-of-the-art performance on the TACRED dataset.

Benchmarks

BenchmarkMethodologyMetrics
relation-extraction-on-tacredDG-SpanBERT-large
F1: 71.5

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Efficient long-distance relation extraction with DG-SpanBERT | Papers | HyperAI