Existing research in the field of automated negotiation considers a negotiation architecture in which some of the negotiation components are designed separately by reinforcement learning (RL), but comprehensive negotiation strategy design has not been achieved. In this study, we formulated an RL model based on a Markov decision process (MDP) for bilateral multi-issue negotiations. We propose a versatile negotiating agent that can effectively learn various negotiation strategies and domains through comprehensive strategies using deep RL. We show that the proposed method can achieve the same or better utility than existing negotiation agents
Abstract. Automated negotiation techniques play an important role in facilitating human in reaching ...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Automated negotiation mechanisms can be helpful in contexts where users want to reach mutually satis...
This paper introduces an acceptance strategy based on reinforcement learning for automated bilateral...
This study proposed a novel reward-based negotiating agent strategy using an issue-based represented...
Learning is crucial for automated negotiation, and recent years have witnessed a remarkable achievem...
With the prospects of decentralized multi-agent systems becoming more prevalent in daily life, autom...
Negotiation is a complex problem, in which the variety of settings and opponents that may be encount...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
This paper proposes an adaptation of the Q-Learning reinforcement learning algorithm, for the identi...
We use hand-crafted simulated negotiators (SNs) to train and evaluate dialogue poli-cies for two-iss...
This paper introduces a strategy for learning opponent parameters in automated negotiation and using...
In this paper, we apply reinforcement learning (RL) to a multi-party trading sce-nario where the dia...
While achieving tremendous success, there is still a major issue standing out in the domain of autom...
In this paper we present a comparative evaluation of various negotiation strategies within an online...
Abstract. Automated negotiation techniques play an important role in facilitating human in reaching ...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Automated negotiation mechanisms can be helpful in contexts where users want to reach mutually satis...
This paper introduces an acceptance strategy based on reinforcement learning for automated bilateral...
This study proposed a novel reward-based negotiating agent strategy using an issue-based represented...
Learning is crucial for automated negotiation, and recent years have witnessed a remarkable achievem...
With the prospects of decentralized multi-agent systems becoming more prevalent in daily life, autom...
Negotiation is a complex problem, in which the variety of settings and opponents that may be encount...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
This paper proposes an adaptation of the Q-Learning reinforcement learning algorithm, for the identi...
We use hand-crafted simulated negotiators (SNs) to train and evaluate dialogue poli-cies for two-iss...
This paper introduces a strategy for learning opponent parameters in automated negotiation and using...
In this paper, we apply reinforcement learning (RL) to a multi-party trading sce-nario where the dia...
While achieving tremendous success, there is still a major issue standing out in the domain of autom...
In this paper we present a comparative evaluation of various negotiation strategies within an online...
Abstract. Automated negotiation techniques play an important role in facilitating human in reaching ...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Automated negotiation mechanisms can be helpful in contexts where users want to reach mutually satis...