We describe a two-step approach for dialogue management in task-oriented spoken dialogue systems. A unified neural network framework is proposed to enable the system to first learn by supervision from a set of dialogue data and then continuously improve its behaviour via reinforcement learning, all using gradient-based algorithms on one single model. The experiments demonstrate the supervised model's effectiveness in the corpus-based evaluation, with user simulation, and with paid human subjects. The use of reinforcement learning further improves the model's performance in both interactive settings, especially under higher-noise conditions
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...
To train a statistical spoken dialogue system (SDS) it is essen-tial that an accurate method for mea...
To train a statistical spoken dialogue system (SDS) it is essen-tial that an accurate method for mea...
To train a statistical spoken dialogue system (SDS) it is essential that an accurate method for meas...
Viewing dialogue management as a reinforcement learning task enables a system to learn to act optima...
Dialogue policy learning for task-oriented dialogue systems has enjoyed great progress recently most...
Spoken Dialog Systems allow users to interact with a Dialog Manager (DM) using natural language, the...
Building a controllable neural conversation model (NCM) is an important task. In this paper, we focu...
Current state-of-the-art neural dialogue systems are mainly data-driven and are trained on human-gen...
Statistical spoken dialogue systems have the attractive property of being able to be optimised from ...
© 2018 Chuandong YinTask-oriented dialogue systems such as Apple Siri and Microsoft Cortana are beco...
Statistical spoken dialogue systems have the attractive property of being able to be optimised from ...
The ability to compute an accurate reward function is essential for optimising a dialogue policy via...
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...
To train a statistical spoken dialogue system (SDS) it is essen-tial that an accurate method for mea...
To train a statistical spoken dialogue system (SDS) it is essen-tial that an accurate method for mea...
To train a statistical spoken dialogue system (SDS) it is essential that an accurate method for meas...
Viewing dialogue management as a reinforcement learning task enables a system to learn to act optima...
Dialogue policy learning for task-oriented dialogue systems has enjoyed great progress recently most...
Spoken Dialog Systems allow users to interact with a Dialog Manager (DM) using natural language, the...
Building a controllable neural conversation model (NCM) is an important task. In this paper, we focu...
Current state-of-the-art neural dialogue systems are mainly data-driven and are trained on human-gen...
Statistical spoken dialogue systems have the attractive property of being able to be optimised from ...
© 2018 Chuandong YinTask-oriented dialogue systems such as Apple Siri and Microsoft Cortana are beco...
Statistical spoken dialogue systems have the attractive property of being able to be optimised from ...
The ability to compute an accurate reward function is essential for optimising a dialogue policy via...
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
Dialog system is class of intelligent system that interacts with human via natural languageinterface...
User simulation is widely used to generate artificial dialogues in order to train statistical spoken...