The efficiency of automated multi-issue negotiation depends on the available information about the opponent. In a competitive negotiation environment, agents do not reveal their parameters to their opponents in order to avoid exploitation. Several researchers have argued that an agent's optimal strategy can be determined using the opponent's deadline and reserve points. In this paper, we propose a new learning agent, so-called Evolutionary Learning Agent (ELA), able to estimate its opponent's deadline and reserve points in bilateral multi-issue negotiation based on opponent's counter-offers (without any additional extra information). ELA reduces the learning problem to a system of non-linear equations and uses an evolutionary algorithm base...
Abstract — Information about the opponent is essential to improve automated negotiation strategies f...
This paper explores the possibility of using evolutionary algorithms (EAs) to automatically generate...
We describe a system for automated bilateral negotiations in which artificial agents are evolved by ...
The efficiency of automated multi-issue negotiation depends on the available information about the o...
To be successful in open, multi-agent environments, autonomous agents must be capable of adapting th...
Developing effective and efficient negotiation mechanisms for real-world applications such as e-Busi...
In this paper we present a negotiation agent based on Genetic Algorithm (GA) and Surrogate Modelling...
A systematic validation of evolutionary techniques in the field of bargaining is presented. For this...
This paper studies the dynamic and equilibrium-selecting behavior of a multi-agent system consisting...
To be successful in open, multi-agent environments, au-tonomous agents must be capable of adapting t...
We describe a system for bilateral negotiations in which artificial agents aregenerated by an evolut...
Abstract. We describe a system for bilateral negotiations in which artificial agents are generated b...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
We describe a system for bilateral negotiations in which artificial agents aregenerated by an evolut...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
Abstract — Information about the opponent is essential to improve automated negotiation strategies f...
This paper explores the possibility of using evolutionary algorithms (EAs) to automatically generate...
We describe a system for automated bilateral negotiations in which artificial agents are evolved by ...
The efficiency of automated multi-issue negotiation depends on the available information about the o...
To be successful in open, multi-agent environments, autonomous agents must be capable of adapting th...
Developing effective and efficient negotiation mechanisms for real-world applications such as e-Busi...
In this paper we present a negotiation agent based on Genetic Algorithm (GA) and Surrogate Modelling...
A systematic validation of evolutionary techniques in the field of bargaining is presented. For this...
This paper studies the dynamic and equilibrium-selecting behavior of a multi-agent system consisting...
To be successful in open, multi-agent environments, au-tonomous agents must be capable of adapting t...
We describe a system for bilateral negotiations in which artificial agents aregenerated by an evolut...
Abstract. We describe a system for bilateral negotiations in which artificial agents are generated b...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
We describe a system for bilateral negotiations in which artificial agents aregenerated by an evolut...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
Abstract — Information about the opponent is essential to improve automated negotiation strategies f...
This paper explores the possibility of using evolutionary algorithms (EAs) to automatically generate...
We describe a system for automated bilateral negotiations in which artificial agents are evolved by ...