Artificially intelligent agents equipped with strategic skills that can negotiate during their interactions with other natural or artificial agents are still underdeveloped. This paper describes a successful application of Deep Reinforcement Learning (DRL) for training intelligent agents with strategic conversational skills, in a situated dialogue setting. Previous studies have modelled the behaviour of strategic agents using supervised learning and traditional reinforcement learning techniques, the latter using tabular representations or learning with linear function approximation. In this study, we apply DRL with a high-dimensional state space to the strategic board game of Settlers of Catan---where players can offer resources in exchange...
© 2018 Chuandong YinTask-oriented dialogue systems such as Apple Siri and Microsoft Cortana are beco...
Standard deep reinforcement learning methods such as Deep Q-Networks (DQN) for multiple tasks (domai...
In this paper, we apply reinforcement learning (RL) to a multi-party trading sce-nario where the dia...
In this paper we present a comparative evaluation of various negotiation strategies within an online...
Recent advances in automating Dialogue Management have been mainly made in cooperative environments...
In spoken dialogue systems, we aim to deploy artificial intelligence to build automated dialogue age...
In this paper we propose a novel Deep Reinforcement Learning (DRL) algorithm that uses the concept o...
This work investigates communication in cooperative settings of multi-agent reinforcement learning. ...
Abstract—Strategic conversational agents often need to trade resources with their opponent conversan...
Dialogue policy learning for task-oriented dialogue systems has enjoyed great progress recently most...
Reinforcement learning (RL) is a promising approach to solve dialogue policy optimisation. Tradition...
Learning is crucial for automated negotiation, and recent years have witnessed a remarkable achievem...
This study proposed a novel reward-based negotiating agent strategy using an issue-based represented...
We consider the task of building effective but human-like policies in multi-agent decision-making pr...
International audienceOne major drawback of Reinforcement Learning (RL) Spoken Dialogue Systems is t...
© 2018 Chuandong YinTask-oriented dialogue systems such as Apple Siri and Microsoft Cortana are beco...
Standard deep reinforcement learning methods such as Deep Q-Networks (DQN) for multiple tasks (domai...
In this paper, we apply reinforcement learning (RL) to a multi-party trading sce-nario where the dia...
In this paper we present a comparative evaluation of various negotiation strategies within an online...
Recent advances in automating Dialogue Management have been mainly made in cooperative environments...
In spoken dialogue systems, we aim to deploy artificial intelligence to build automated dialogue age...
In this paper we propose a novel Deep Reinforcement Learning (DRL) algorithm that uses the concept o...
This work investigates communication in cooperative settings of multi-agent reinforcement learning. ...
Abstract—Strategic conversational agents often need to trade resources with their opponent conversan...
Dialogue policy learning for task-oriented dialogue systems has enjoyed great progress recently most...
Reinforcement learning (RL) is a promising approach to solve dialogue policy optimisation. Tradition...
Learning is crucial for automated negotiation, and recent years have witnessed a remarkable achievem...
This study proposed a novel reward-based negotiating agent strategy using an issue-based represented...
We consider the task of building effective but human-like policies in multi-agent decision-making pr...
International audienceOne major drawback of Reinforcement Learning (RL) Spoken Dialogue Systems is t...
© 2018 Chuandong YinTask-oriented dialogue systems such as Apple Siri and Microsoft Cortana are beco...
Standard deep reinforcement learning methods such as Deep Q-Networks (DQN) for multiple tasks (domai...
In this paper, we apply reinforcement learning (RL) to a multi-party trading sce-nario where the dia...