The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it did to many others. One of the main challenges is to take advantage of the information available when several agents, possibly using different learning techniques, are dealing with similar problems, either in the same location (i.e. acting as a team) or in different ones. This work aims at studying the possible advantages and pitfalls of exchanging information during the learning process, leading to better adaptation. We will discuss the subject of when, how and to whom ask for advice, and present the results obtained in two experimental scenarios: the Pursuit (Predator-Prey) Domain and a Traffic Control simulation. Results show that exchange ...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
In multiagent systems, an agent does not usu-ally have complete information about the pref-erences a...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
This work aims at defining and testing a set of techniques that enables agents to use information fr...
When deploying autonomous agents in the real world, we need effective ways of communicating objectiv...
Abstract. A generic predator/prey pursuit scenario is used to validate a common learning approach us...
Effective coordination of agents ’ actions in partially-observable domains is a major chal-lenge of ...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
Multi-agent learning has been widely used to enable multiple agents to autonomously find solutions f...
Graduation date: 2009Coordination in large multiagent systems in order to achieve a system level goa...
In multiagent systems, an agent does not usually have complete information about the preferences and...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
Over the past few years, artificial intelligence (AI) has achieved great success in a variety of app...
In multiagent systems, an agent does not usu-ally have complete information about the pref-erences a...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
In multiagent systems, an agent does not usu-ally have complete information about the pref-erences a...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
This work aims at defining and testing a set of techniques that enables agents to use information fr...
When deploying autonomous agents in the real world, we need effective ways of communicating objectiv...
Abstract. A generic predator/prey pursuit scenario is used to validate a common learning approach us...
Effective coordination of agents ’ actions in partially-observable domains is a major chal-lenge of ...
Mutual learning is an emerging field in intelligent systems which takes inspiration from naturally i...
Multi-agent learning has been widely used to enable multiple agents to autonomously find solutions f...
Graduation date: 2009Coordination in large multiagent systems in order to achieve a system level goa...
In multiagent systems, an agent does not usually have complete information about the preferences and...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
Over the past few years, artificial intelligence (AI) has achieved great success in a variety of app...
In multiagent systems, an agent does not usu-ally have complete information about the pref-erences a...
Reinforcement Learning has long been employed to solve sequential decision-making problems with mini...
The ability to learn is essential to intelligent agents that need to adapt to dynamic, non-determini...
In multiagent systems, an agent does not usu-ally have complete information about the pref-erences a...