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Topic Tensor Network for Implicit Discourse Relation Recognition in Chinese

机译:中文隐式话语关系识别的主题张量网络

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In the literature, most of the previous studies on English implicit discourse relation recognition only use sentence-level representations, which cannot provide enough semantic information in Chinese due to its unique paratac-tic characteristics. In this paper, we propose a topic tensor network to recognize Chinese implicit discourse relations with both sentence-level and topic-level representations. In particular, besides encoding arguments (discourse units) using a gated convolutional network to obtain sentence-level representations, we train a simplified topic model to infer the latent topic-level representations. Moreover, we feed the two pairs of representations to two factored tensor networks, respectively, to capture both the sentence-level interactions and topic-level relevance using multi-slice tensors. Experimentation on CDTB, a Chinese discourse corpus, shows that our proposed model significantly outperforms several state-of-the-art baselines in both micro and macro F1-scores.
机译:在文献中,先前的大多数关于英语隐含语篇关系识别的研究都仅使用句子级的表示形式,由于其独特的共性特征而无法提供足够的中文语义信息。在本文中,我们提出了一个主题张量网络,以识别具有句子级和主题级表示形式的中文隐式话语关系。特别是,除了使用门控卷积网络对自变量(语篇单元)进行编码以获得句子级表示之外,我们还训练了一个简化的主题模型来推断潜在的主题级表示。此外,我们将两对表示形式分别馈送到两个因子张量网络,以使用多层切片张量捕获句子级交互和主题级相关性。在中国话语语料库CDTB上进行的实验表明,我们提出的模型在微观和宏观F1评分上均明显优于几种最新的基线。

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