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A Multi-classifier Approach to support Coreference Resolution in a Vector Space Model

机译:一种多分类器方法,支持矢量空间模型中的练习分辨率

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In this paper a different machine learning approach is presented to deal with the coreference resolution task. This approach consists of a multi-classifier system that classifies mention-pairs in a reduced dimensional vector space. The vector representation for mention-pairs is generated using a rich set of linguistic features. The SVD technique is used to generate the reduced dimensional vector space. The approach is applied to the OntoNotes v4.0 Release Corpus for the column-format files used in CONLL-2011 coreference resolution shared task. The results obtained show that the reduced dimensional representation obtained by SVD is very adequate to appropriately classify mention-pair vectors. Moreover, we can state that the multi-classifier plays an important role in improving the results.
机译:在本文中,提出了一种不同的机器学习方法来处理Coreference分辨率任务。该方法包括一个多分类系统,该系统在减少的维度矢量空间中分类提及对。使用丰富的语言特征生成提及对的矢量表示。 SVD技术用于生成减小的尺寸矢量空间。该方法应用于Ontonotes V4.0释放语料库,用于Conll-2011 Coreference分辨率共享任务中的列格式文件。得到的结果表明,SVD获得的减小的尺寸表示非常适当地适当地分类提及对向量。此外,我们可以说,多分类器在提高结果方面发挥着重要作用。

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