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Unsupervised Adversarial Domain Adaptation for Implicit Discourse Relation Classification

机译:隐性话语关系分类的无监督对抗域自适应

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Implicit discourse relations are not only more challenging to classify, but also to annotate, than their explicit counterparts. We tackle situations where training data for implicit relations are lacking, and exploit domain adaptation from explicit relations (Ji et al.. 2015). We present an unsupervised adversarial domain adaptive network equipped with a reconstruction component. Our system outperforms prior works and other adversarial benchmarks for unsupervised domain adaptation. Additionally, we extend our system to take advantage of labeled data if some are available.
机译:隐性话语关系不仅比其明确的对应关系更具挑战性,而且在分类和注释方面也更具挑战性。我们处理缺乏针对隐式关系的训练数据的情况,并利用显式关系的领域适应性(Ji等人,2015)。我们提出了一种配备有重构组件的无监督对抗域自适应网络。我们的系统优于无监督域自适应的先前工作和其他对抗性基准。此外,我们扩展了系统,以利用带标签的数据(如果有的话)的优势。

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