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GSN: A Graph-Structured Network for Multi-Party Dialogues (1905.13637v1)
Published 31 May 2019 in cs.CL and cs.LG
Abstract: Existing neural models for dialogue response generation assume that utterances are sequentially organized. However, many real-world dialogues involve multiple interlocutors (i.e., multi-party dialogues), where the assumption does not hold as utterances from different interlocutors can occur "in parallel." This paper generalizes existing sequence-based models to a Graph-Structured neural Network (GSN) for dialogue modeling. The core of GSN is a graph-based encoder that can model the information flow along the graph-structured dialogues (two-party sequential dialogues are a special case). Experimental results show that GSN significantly outperforms existing sequence-based models.
- Wenpeng Hu (8 papers)
- Zhangming Chan (11 papers)
- Bing Liu (212 papers)
- Dongyan Zhao (144 papers)
- Jinwen Ma (31 papers)
- Rui Yan (250 papers)