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Learning Antecedent Structures for Event Coreference Resolution

机译:学习事件共指解析的前因结构

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The vast majority of existing work on learning-based event coreference resolution has employed the so-called mentionpair model, which is a binary classifier that determines whether two event mentions are coreferent. Though conceptually simple, this model is known to suffer from several major weaknesses. Rather than making pairwise local decisions, we view event coreference as a structured prediction task, where we propose a probabilistic model that selects an antecedent for each event mention in a given document in a collective manner. Our model achieves the best results reported to date on the new KBP 2016 English and Chinese event coreference resolution datasets.
机译:现有的基于学习的事件共指解析的绝大多数工作都采用了所谓的对对模型,该模型是一个二进制分类器,用于确定两个事件提及是否相互关联。尽管从概念上讲很简单,但是已知该模型有几个主要缺点。与其制定成对的局部决策,我们将事件共指视为结构化的预测任务,在此我们提出了一个概率模型,该模型以给定的方式为给定文档中的每个事件提及选择一个先行条件。我们的模型在新的KBP 2016英文和中文事件共同参照解决方案数据集上取得了迄今为止所报告的最佳结果。

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