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Collaborative Partitioning for Coreference Resolution

机译:Coreference分辨率的协作分区

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This paper presents a collaborative partitioning algorithm-a novel ensemble-based approach to coreference resolution. Starting from the all-singleton partition, we search for a solution close to the ensemble's outputs in terms of a task-specific similarity measure. Our approach assumes a loose integration of individual components of the ensemble and can therefore combine arbitrary coreference resolvers, regardless of their models. Our experiments on the CoNLL dataset show that collaborative partitioning yields results superior to those attained by the individual components, for ensembles of both strong and weak systems. Moreover, by applying the collaborative partitioning algorithm on top of three state-of-the-art resolvers, we obtain the second-best coreference performance reported so far in the literature (MELA v08 score of 64.47).
机译:本文提出了一种协同分区算法 - 一种基于COSEREFERS分辨率的新的集合方法。从All-Singleton分区开始,我们在任务特定的相似度测量方面搜索靠近集合输出的解决方案。我们的方法假定集合的各个组件的松散集成,因此无论其模型如何,都可以组合任意的Coreference Resolvers。我们在Conll DataSet上的实验表明,合作分区产生的结果优于各个组件,用于强大和弱系统的集合。此外,通过在三个最先进的解析器的顶部应用协作分区算法,我们在文献中获得了迄今为止报告的第二次最佳COSTERIFES性能(MEMA V08分数为64.47)。

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