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A Constraint-Based Hypergraph Partitioning Approach to Coreference Resolution

机译:基于约束的超图分割共指分解方法

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This work is focused on research in machine learning for coreference resolution. Coreference resolution is a natural language processing task that consists of determining the expressions in a discourse that refer to the same entity.The main contributions of this article are (i) a new approach to coreference resolution based on constraint satisfaction, using a hypergraph to represent the problem and solving it by relaxation labeling; and (ii) research towards improving coreference resolution performance using world knowledge extracted from Wikipedia.The developed approach is able to use an entity-mention classification model with more expressiveness than the pair-based ones, and overcome the weaknesses of previous approaches in the state of the art such as linking contradictions, classifications without context, and lack of information evaluating pairs. Furthermore, the approach allows the incorporation of new information by adding constraints, and research has been done in order to use world knowledge to improve performances.RelaxCor, the implementation of the approach, achieved results at the state-of-the-art level, and participated in international competitions: SemEval-2010 and CoNLL-2011. RelaxCor achieved second place in CoNLL-2011.
机译:这项工作专注于机器学习中用于共指解析的研究。共指解析是一种自然语言处理任务,包括确定语篇中引用同一实体的表达式。本文的主要贡献是(i)一种新的基于约束满足的共指解析方法,使用超图表示通过放松标签解决问题; (ii)利用从Wikipedia中提取的世界知识来提高共指分辨率性能的研究。所开发的方法能够使用比基于配对的方法更具表现力的实体提及分类模型,并克服了该州先前方法的缺点。诸如链接矛盾,没有上下文的分类以及缺乏信息评估对之类的技术。此外,该方法允许通过添加约束条件来合并新信息,并且已经进行了研究,以便利用世界知识来提高性能。RelaxCor(该方法的实现)在最新水平上取得了成果,并参加了国际比赛:SemEval-2010和CoNLL-2011。 RelaxCor在CoNLL-2011中获得第二名。

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