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Agree to disagree: Improving disagreement detection with dual GRUs

机译:同意不同意:用双克改善分歧检测

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摘要

This paper presents models for detecting agreement/disagreement in online discussions. In this work we show that by using a Siamese inspired architecture to encode the discussions, we no longer need to rely on hand-crafted features to exploit the meta thread structure. We evaluate our model on existing online discussion corpora ABCD, IAC and AWTP. Experimental results on ABCD dataset show that by fusing lexical and word embedding features, our model achieves the state of the art performance of 0.804 average F1 score. We also show that the model trained on ABCD dataset performs competitively on relatively smaller annotated datasets (IAC and AWTP).
机译:本文介绍了检测在线讨论中协议/分歧的模型。在这项工作中,我们展示通过使用暹罗灵感的架构来编码讨论,我们不再需要依靠手工制作的功能来利用元线结构。我们在现有在线讨论Corpora ABCD,IAC和AWTP上评估我们的模型。 ABCD DataSet的实验结果表明,通过融合词汇和单词嵌入功能,我们的车型实现了最新的最新性能0.804平均F1分数。我们还表明,ABCD DataSet培训的模型在相对较小的注释数据集(IAC和AWTP)上竞争地执行。

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