Back to Search Start Over

Meta Dialogue Policy Learning

Authors :
Xu, Yumo
Zhu, Chenguang
Peng, Baolin
Zeng, Michael
Xu, Yumo
Zhu, Chenguang
Peng, Baolin
Zeng, Michael
Publication Year :
2020

Abstract

Dialog policy determines the next-step actions for agents and hence is central to a dialogue system. However, when migrated to novel domains with little data, a policy model can fail to adapt due to insufficient interactions with the new environment. We propose Deep Transferable Q-Network (DTQN) to utilize shareable low-level signals between domains, such as dialogue acts and slots. We decompose the state and action representation space into feature subspaces corresponding to these low-level components to facilitate cross-domain knowledge transfer. Furthermore, we embed DTQN in a meta-learning framework and introduce Meta-DTQN with a dual-replay mechanism to enable effective off-policy training and adaptation. In experiments, our model outperforms baseline models in terms of both success rate and dialogue efficiency on the multi-domain dialogue dataset MultiWOZ 2.0.<br />Comment: 10 pages, 3 figures

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228412017
Document Type :
Electronic Resource