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Evaluating Discourse in Structured Text Representations

机译:评估结构性文本陈述中的话语

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Discourse structure is integral to understanding a text and is helpful in many NLP tasks. Learning latent representations of discourse is an attractive alternative to acquiring expensive labeled discourse data. Liu and Lapata (2018) propose a structured attention mechanism for text classification that derives a tree over a text, akin to an RST discourse tree. We examine this model in detail, and evaluate on additional discourse-relevant tasks and datasets, in order to assess whether the structured attention improves performance on the end task and whether it captures a text's discourse structure. We find the learned latent trees have little to no structure and instead focus on lexical cues; even after obtaining more structured trees with proposed model modifications, the trees are still far from capturing discourse structure when compared to discourse dependency trees from an existing discourse parser. Finally, ablation studies show the structured attention provides little benefit, sometimes even hurting performance.~1
机译:话语结构是对理解文本的组成部分,并且有助于许多NLP任务。学习话语的潜在表示是有吸引力的替代方案,可以获得昂贵的标记话语数据。刘和拉帕塔(2018)提出了一种构成的注意力机制,用于源于文本的文本分类,类似于RST话语树。我们详细检查了此模型,并在附加的话语相关任务和数据集中进行评估,以评估结构化的注意力是否提高了最终任务的性能以及它是否捕获了文本的话语结构。我们发现学习的潜在树木几乎没有结构,而是专注于词汇线索;即使在具有所提出的模型修改的更多结构化树后,与来自现有话语解析器的话语依赖树相比,树木仍远未捕获话语结构。最后,消融研究表明,结构性关注提供了很少的好处,有时甚至伤害性能。〜1

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