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Higher-order Coreference Resolution with Coarse-to-fine Inference

2018-04-15NAACL 2018Code Available1· sign in to hype

Kenton Lee, Luheng He, Luke Zettlemoyer

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Abstract

We introduce a fully differentiable approximation to higher-order inference for coreference resolution. Our approach uses the antecedent distribution from a span-ranking architecture as an attention mechanism to iteratively refine span representations. This enables the model to softly consider multiple hops in the predicted clusters. To alleviate the computational cost of this iterative process, we introduce a coarse-to-fine approach that incorporates a less accurate but more efficient bilinear factor, enabling more aggressive pruning without hurting accuracy. Compared to the existing state-of-the-art span-ranking approach, our model significantly improves accuracy on the English OntoNotes benchmark, while being far more computationally efficient.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CoNLL-2012c2f-coref + ELMoAvg F173Unverified
OntoNotesc2f-corefF173Unverified
OntoNotese2e-coref + ELMo + hyperparameter tuningF172.3Unverified

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