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Graph Refinement for Coreference Resolution

About

The state-of-the-art models for coreference resolution are based on independent mention pair-wise decisions. We propose a modelling approach that learns coreference at the document-level and takes global decisions. For this purpose, we model coreference links in a graph structure where the nodes are tokens in the text, and the edges represent the relationship between them. Our model predicts the graph in a non-autoregressive manner, then iteratively refines it based on previous predictions, allowing global dependencies between decisions. The experimental results show improvements over various baselines, reinforcing the hypothesis that document-level information improves conference resolution.

Lesly Miculicich, James Henderson• 2022

Related benchmarks

TaskDatasetResultRank
Coreference ResolutionCoNLL English 2012 (test)
MUC F1 Score85.9
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