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Centering-based Neural Coherence Modeling with Hierarchical Discourse Segments

机译:基于居中的神经相干性建模,具有分层话语段

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Previous neural coherence models have focused on identifying semantic relations between adjacent sentences. However, they do not have the means to exploit structural information. In this work, we propose a coherence model which takes discourse structural information into account without relying on human annotations. We approximate a linguistic theory of coherence, Centering theory, which we use to track the changes of focus between discourse segments. Our model first identifies the focus of each sentence, recognized with regards to the context, and constructs the structural relationship for discourse segments by tracking the changes of the focus. The model then incorporates this structural information into a structure-aware transformer. We evaluate our model on two tasks, automated essay scoring and assessing writing quality. Our results demonstrate that our model, built on top of a pretrained language model, achieves state-of-the-art performance on both tasks. We next statistically examine the identified trees of texts assigned to different quality scores. Finally, we investigate what our model learns in terms of theoretical claims.
机译:以前的神经相干模型侧重于识别相邻句子之间的语义关系。但是,它们没有利用结构信息的手段。在这项工作中,我们提出了一个连贯模式,在不依赖于人类注释的情况下考虑话语结构信息。我们近似一致的一致性理论,以中心为主的理论,我们用来跟踪话语细分之间的焦点变化。我们的模型首先识别每个句子的焦点,以便在上下文中识别,并通过跟踪焦点的变化来构建话语细分的结构关系。然后,模型将该结构信息包含在结构感变压器中。我们在两项任务中评估我们的模型,自动化论文评分和评估写作质量。我们的结果表明,我们的模型构建在预先预付费语言模型之上,实现了两项任务的最先进的性能。我们接下来统计地检查分配给不同质量分数的文本的已识别的树木。最后,我们调查我们的模型在理论索赔方面学习的内容。

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