屏蔽

Tianyi Wang, Yating Zhang, Xiaozhong Liu, Changlong Sun, Qiong Zhang
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引用次数: 0

摘要

多角色对话理解包括问题回答、行为分类、对话总结等多种任务。虽然对话语料库非常丰富,但用于特定学习任务的标记数据可能非常稀缺和昂贵。在这项工作中,我们通过各种类型的无监督预训练任务来研究对话上下文表示学习,其中训练目标是根据话语的性质和多角色对话的结构自然给定的。同时,为了定位关键信息进行对话总结/提取,预训练过程实现了外部知识整合。通过三个不同的对话数据集以及一些下游对话挖掘任务,对所提出的微调预训练机制进行了全面评估。结果表明,所提出的预训练机制对所有下游任务都有显著的贡献,对不同编码器没有区别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Masking
Multi-role dialogue understanding comprises a wide range of diverse tasks such as question answering, act classification, dialogue summarization etc. While dialogue corpora are abundantly available, labeled data, for specific learning tasks, can be highly scarce and expensive. In this work, we investigate dialogue context representation learning with various types unsupervised pretraining tasks where the training objectives are given naturally according to the nature of the utterance and the structure of the multi-role conversation. Meanwhile, in order to locate essential information for dialogue summarization/extraction, the pretraining process enables external knowledge integration. The proposed fine-tuned pretraining mechanism is comprehensively evaluated via three different dialogue datasets along with a number of downstream dialogue-mining tasks. Result shows that the proposed pretraining mechanism significantly contributes to all the downstream tasks without discrimination to different encoders.
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