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Classification and Clustering of Arguments with Contextualized Word Embeddings

机译:具有上下文化词嵌入的参数的分类和聚类

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We experiment with two recent contextualized word embedding methods (ELMo and BERT) in the context of open-domain argument search. For the first time, we show how to leverage the power of contextualized word embeddings to classify and cluster topic-dependent arguments, achieving impressive results on both tasks and across multiple datasets. For argument classification, we improve the state-of-the-art for the UKP Sentential Argument Mining Corpus by 20.8 percentage points and for the IBM Debater - Evidence Sentences dataset by 7.4 percentage points. For the understudied task of argument clustering, we propose a pre-training step which improves by 7.8 percentage points over strong baselines on a novel dataset, and by 12.3 percentage points for the Argument Facet Similarity (AFS) Corpus.~1
机译:我们在开放域参数搜索的环境中尝试了两种最新的上下文化词嵌入方法(ELMo和BERT)。第一次,我们展示了如何利用上下文化词嵌入的功能来对与主题相关的论点进行分类和聚类,从而在任务和多个数据集上均取得令人印象深刻的结果。对于论点分类,我们将UKP句子论点挖掘语料库的最新技术水平提高了20.8个百分点,将IBM Debater-证据句法数据集的最新水平提高了7.4个百分点。对于尚未得到充分研究的论点聚类任务,我们提出了一个预训练步骤,该步骤比新数据集上的强基线提高了7.8个百分点,对论点构面相似度(AFS)语料库提高了12.3个百分点。〜1

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