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Addressing Class Imbalance for Improved Recognition of Implicit Discourse Relations

机译:解决班级不平衡问题,以提高对内隐语篇关系的认识

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In this paper we address the problem of skewed class distribution in implicit discourse relation recognition. We examine the performance of classifiers for both binary classification predicting if a particular relation holds or not and for multi-class prediction. We review prior work to point out that the problem has been addressed differently for the binary and multi-class problems. We demonstrate that adopting a unified approach can significantly improve the performance of multi-class prediction. We also propose an approach that makes better use of the full annotations in the training set when downsampling is used. We report significant absolute improvements in performance in multi-class prediction, as well as significant improvement of binary classifiers for detecting the presence of implicit Temporal, Comparison and Contingency relations.
机译:在本文中,我们解决了隐性话语关系识别中的类分布偏斜问题。我们检查分类器的性能,既可以用于预测是否存在特定关系的二元分类,也可以用于多类预测。我们回顾了先前的工作,指出针对二进制和多类问题,该问题已以不同的方式解决。我们证明采用统一的方法可以显着提高多类别预测的性能。我们还提出了一种方法,当使用降采样时,可以更好地利用训练集中的完整注释。我们报告了在多类预测中性能的显着绝对提高,以及用于检测隐式时间,比较和列​​联关系的存在的二元分类器的显着改进。

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