Title :
Distributed dialogue policies for multi-domain statistical dialogue management
Author :
Gasic, M. ; Kim, D. ; Tsiakoulis, P. ; Young, S.
Abstract :
Statistical dialogue systems offer the potential to reduce costs by learning policies automatically on-line, but are not designed to scale to large open-domains. This paper proposes a hierarchical distributed dialogue architecture in which policies are organised in a class hierarchy aligned to an underlying knowledge graph. This allows a system to be deployed using a modest amount of data to train a small set of generic policies. As further data is collected, generic policies can be adapted to give in-domain performance. Using Gaussian process-based reinforcement learning, it is shown that within this framework generic policies can be constructed which provide acceptable user performance, and better performance than can be obtained using under-trained domain specific policies. It is also shown that as sufficient in-domain data becomes available, it is possible to seamlessly improve performance, without subjecting users to unacceptable behaviour during the adaptation period and without limiting the final performance compared to policies trained from scratch.
Keywords :
Gaussian processes; interactive systems; learning (artificial intelligence); Gaussian process-based reinforcement learning; generic policies; hierarchical distributed dialogue policies; learning policies; multidomain statistical dialogue management; Databases; Limiting; Training; Training data; Gaussian process; POMDP; dialogue systems; multi-domain; open-domain;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2015 IEEE International Conference on
Conference_Location :
South Brisbane, QLD
DOI :
10.1109/ICASSP.2015.7178997