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Comparing Word Representations for Implicit Discourse Relation Classification

机译:内隐语篇关系分类的词表达比较

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This paper presents a detailed comparative framework for assessing the usefulness of unsupervised word representations for identifying so-called implicit discourse relations. Specifically, we compare standard one-hot word pair representations against low-dimensional ones based on Brown clusters and word embeddings. We also consider various word vector combination schemes for deriving discourse segment representations from word vectors, and compare representations based either on all words or limited to head words. Our main finding is that denser representations systematically outperform sparser ones and give state-of-the-art performance or above without the need for additional hand-crafted features.
机译:本文提出了一个详细的比较框架,用于评估无监督词表示法对识别所谓的隐性话语关系的有用性。具体来说,我们将基于布朗聚类和词嵌入的标准一词热对与低维词对进行比较。我们还考虑了各种词向量组合方案,用于从词向量中推导语篇段表示,并比较基于所有词或限于首词的表示。我们的主要发现是,较密集的表示系统地胜过稀疏的表示,并具有最新的性能或更高的性能,而无需其他手工制作的功能。

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