Generative Encoder-Decoder Models for Task-Oriented Spoken Dialog Systems with Chatting Capability (1706.08476v1)
Abstract: Generative encoder-decoder models offer great promise in developing domain-general dialog systems. However, they have mainly been applied to open-domain conversations. This paper presents a practical and novel framework for building task-oriented dialog systems based on encoder-decoder models. This framework enables encoder-decoder models to accomplish slot-value independent decision-making and interact with external databases. Moreover, this paper shows the flexibility of the proposed method by interleaving chatting capability with a slot-filling system for better out-of-domain recovery. The models were trained on both real-user data from a bus information system and human-human chat data. Results show that the proposed framework achieves good performance in both offline evaluation metrics and in task success rate with human users.
- Tiancheng Zhao (48 papers)
- Allen Lu (4 papers)
- Kyusong Lee (16 papers)
- Maxine Eskenazi (35 papers)