In multi-issue negotiation, agents\u27 preferences are extremely important factors for reaching mutual beneficial agreements. However, agents would usually keeping their preferences in secret in order to avoid be exploited by their opponents during a negotiation. Thus, preference modelling has become an important research direction in the area of agent-based negotiation. In this paper, a bilateral multi-issue negotiation approach is proposed to help both negotiation agents to maximise their utilities under a setting that the opponent agent\u27s preference is private information. In the proposed approach, Bayesian learning is employed to analyse the opponent\u27s historical offers and approximately predicate the opponent\u27s preference over...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
We present a classification method for learning an opponent's preferences during a bilateral multi-i...
Abstract — Information about the opponent is essential to improve automated negotiation strategies f...
We present a classification method for learning an opponent's preferences during a bilateral multi-i...
In multi-agent systems, most of the time, an agent does not have complete information about the pref...
Endowing the negotiation agent with a learning ability such that a more beneficial agreement might b...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
Classical negotiation models are weak in supporting real-world business negotiations because these m...
An agent engaged in multi-issue automated negotiation can benefit greatly from learning about its op...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
We present a classification method for learning an opponent's preferences during a bilateral multi-i...
Abstract — Information about the opponent is essential to improve automated negotiation strategies f...
We present a classification method for learning an opponent's preferences during a bilateral multi-i...
In multi-agent systems, most of the time, an agent does not have complete information about the pref...
Endowing the negotiation agent with a learning ability such that a more beneficial agreement might b...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
In large multi-agent systems, individual agents often have conflicting goals, but are dependent on e...
Classical negotiation models are weak in supporting real-world business negotiations because these m...
An agent engaged in multi-issue automated negotiation can benefit greatly from learning about its op...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...
A negotiation between agents is typically an incomplete information game, where the agents initially...