基于预训练和微调语言模型的对话语篇结构提取

Chuyuan Li, Patrick Huber, Wen Xiao, M. Amblard, Chloé Braud, G. Carenini
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引用次数: 0

摘要

语篇处理受到数据稀疏性的影响,尤其是在对话中。因此,我们探索了基于预训练语言模型的注意力矩阵来推断对话潜在话语结构的方法。我们研究了用于微调的多个辅助任务,并表明对话定制的句子排序任务表现最好。为了定位和利用PLM中的话语信息,我们提出了一种无监督和半监督的方法。因此,我们的建议在STAC语料库上取得了令人鼓舞的结果,无监督和半监督方法的F1得分分别为57.2和59.3。当仅限于投影树时,我们的得分分别提高到63.3和68.1。
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Discourse Structure Extraction from Pre-Trained and Fine-Tuned Language Models in Dialogues
Discourse processing suffers from data sparsity, especially for dialogues. As a result, we explore approaches to infer latent discourse structures for dialogues, based on attention matrices from Pre-trained Language Models (PLMs). We investigate multiple auxiliary tasks for fine-tuning and show that the dialogue-tailored Sentence Ordering task performs best. To locate and exploit discourse information in PLMs, we propose an unsupervised and a semi-supervised method. Our proposals thereby achieve encouraging results on the STAC corpus, with F1 scores of 57.2 and 59.3 for the unsupervised and semi-supervised methods, respectively. When restricted to projective trees, our scores improved to 63.3 and 68.1.
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