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Using a Penalty-based Loss Re-estimation Method to Improve Implicit Discourse Relation Classification

机译:使用基于惩罚的损失重新估算方法来改善隐式话语关系分类

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We tackle implicit discourse relation classification, a task of automatically determining semantic relationships between arguments. The attention-worthy words in arguments are crucial clues for classifying the discourse relations. Attention mechanisms have been proven effective in highlighting the attention-worthy words during encoding. However, our survey shows that some inessential words are unintentionally misjudged as the attention-worthy words and, therefore, assigned heavier attention weights than should be. We propose a penalty-based loss re-estimation method to regulate the attention learning process, integrating penalty coefficients into the computation of loss by means of overstability of attention weight distributions. We conduct experiments on the Penn Discourse TreeBank (PDTB) corpus. The test results show that our loss re-estimation method leads to substantial improvements for a variety of attention mechanisms.
机译:我们解决隐式的话语关系分类,这是自动确定参数之间的语义关系的任务。 争论中的注意力值是分类话语关系的关键线索。 已经证明了注意力机制有效地突出了编码期间的注意力。 然而,我们的调查显示,一些非必要的词语无意中被判被判别为关注值得注意的词语,因此,分配了比应该的重量更重的重量。 我们提出了一种基于惩罚的损失重新估算方法来规范注意力学习过程,通过不夸张的重量分布通过不夸张来将惩罚系数整合到损失计算中。 我们在宾夕法尼亚州语言中进行实验(PDTB)语料库。 测试结果表明,我们的损失重新估计方法导致各种关注机制的大量改进。

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