Designing agents that can efficiently learn and integrate user's preferences into decision making processes is a key challenge in automated negotiation. While accurate knowledge of user preferences is highly desirable, eliciting the necessary information might be rather costly, since frequent user interactions may cause inconvenience. Therefore, efficient elicitation strategies (minimizing elicitation costs) for inferring relevant information are critical. We introduce a stochastic, inverse-ranking utility model compatible with the Gaussian Process preference learning framework and integrate it into a (belief) Markov Decision Process paradigm which formalizes automated negotiation processes with incomplete information. Our utility model, wh...
Automated negotiation has been gained a mass of attention mainly because of its broad application po...
Complex negotiations among rational autonomous agents is gain-ing a mass of attention due to the div...
We consider the problem of a shop agent negotiating bilaterally with many customers about a bundle o...
Designing agents that can efficiently learn and integrate user's preferences into decision making pr...
In this paper, we propose a general two-objective Markov Decision Process (MDP) modeling paradigm fo...
Consider an agent that can autonomously negotiate and coordinate with others in our stead, to reach ...
Consider an agent that can autonomously negotiate and coordinate with others in our stead, to reach ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
A wide range of algorithms have been developed for various types of automated negotiation. In develo...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
Automated negotiation has been gained a mass of attention mainly because of its broad application po...
Complex negotiations among rational autonomous agents is gain-ing a mass of attention due to the div...
We consider the problem of a shop agent negotiating bilaterally with many customers about a bundle o...
Designing agents that can efficiently learn and integrate user's preferences into decision making pr...
In this paper, we propose a general two-objective Markov Decision Process (MDP) modeling paradigm fo...
Consider an agent that can autonomously negotiate and coordinate with others in our stead, to reach ...
Consider an agent that can autonomously negotiate and coordinate with others in our stead, to reach ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
Autonomous agents negotiating on our behalf find applications in everyday life in many domains such ...
A wide range of algorithms have been developed for various types of automated negotiation. In develo...
In this paper, we show that it is nonetheless possible to construct an opponent model, i.e. a model ...
Automated negotiation has been gained a mass of attention mainly because of its broad application po...
Complex negotiations among rational autonomous agents is gain-ing a mass of attention due to the div...
We consider the problem of a shop agent negotiating bilaterally with many customers about a bundle o...