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Coreference resolution systems are typically trained with heuristic loss functions that require careful tuning. In this paper we instead apply reinforcement learning to directly optimize a neural mention-ranking model for coreference evaluation metrics. We experiment with two approaches: the REINFORCE policy gradient algorithm and a rewardrescaled max-margin objective. We find the latter to be more effective, resulting in a significant improvement over the current stateof-the-art on the English and Chinese portions of the CoNLL 2012 Shared Task.
Clark et al. (Fri,) studied this question.