International audienceSpoken Dialogue Systems are man-machine interfaces which use spoken language as the medium of interaction. In recent years, dialogue optimization using reinforcement learning has evolved to be a state of the art technique. The primary focus of research in the dialogue optimization domain is to learn some optimal policy with regard to the task description (reward function) and the user simulation being employed. However in case human-human interaction, the parties involved in the dialogue conversation mutually evolve over the period of interaction. This very ability of humans to co-adapt attributes largely towards increasing the naturalness of the dialogue. This paper outlines a novel framework for co-adaptation in spok...
International audienceSpoken dialogue systems provide an opportunity for man machine interaction usi...
This paper describes a novel method by which a spoken dialogue system can learn to choose an optimal...
Abstract. This paper investigates the impact of reward shaping on a reinforcement learning-based spo...
International audienceSpoken Dialogue Systems are man-machine interfaces which use spoken language a...
Adapting Spoken Dialogue Systems to the user is supposed to result in more efficient and successful ...
Adaptive systems cover a broad range of interactive systems which adjust to new tasks, situations, u...
Abstract—Reinforcement learning is now an acknowledged approach for optimizing the interaction strat...
In a spoken dialogue system, the function of a dialogue manager is to select actions based on observ...
Spoken Dialogue Systems (SDS) are natural language interfaces for human-computer interaction. User a...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
International audienceReinforcement learning is now an acknowledged approach for optimising the inte...
In this paper, an original framework to model human-machine spoken dialogues is proposed to deal wit...
PosterMachine learning methods such as reinforcement learning applied to dialogue strategy optimizat...
In this thesis, I focus on language independent methods of improving utterance understanding and res...
Spoken dialogue systems allow humans to interact with machines using natural speech. As such, they h...
International audienceSpoken dialogue systems provide an opportunity for man machine interaction usi...
This paper describes a novel method by which a spoken dialogue system can learn to choose an optimal...
Abstract. This paper investigates the impact of reward shaping on a reinforcement learning-based spo...
International audienceSpoken Dialogue Systems are man-machine interfaces which use spoken language a...
Adapting Spoken Dialogue Systems to the user is supposed to result in more efficient and successful ...
Adaptive systems cover a broad range of interactive systems which adjust to new tasks, situations, u...
Abstract—Reinforcement learning is now an acknowledged approach for optimizing the interaction strat...
In a spoken dialogue system, the function of a dialogue manager is to select actions based on observ...
Spoken Dialogue Systems (SDS) are natural language interfaces for human-computer interaction. User a...
In recent years we have witnessed a surge in machine learning methods that provide machines with con...
International audienceReinforcement learning is now an acknowledged approach for optimising the inte...
In this paper, an original framework to model human-machine spoken dialogues is proposed to deal wit...
PosterMachine learning methods such as reinforcement learning applied to dialogue strategy optimizat...
In this thesis, I focus on language independent methods of improving utterance understanding and res...
Spoken dialogue systems allow humans to interact with machines using natural speech. As such, they h...
International audienceSpoken dialogue systems provide an opportunity for man machine interaction usi...
This paper describes a novel method by which a spoken dialogue system can learn to choose an optimal...
Abstract. This paper investigates the impact of reward shaping on a reinforcement learning-based spo...