The notion that cooperation can aid a group of agents to solve problems more efficiently than if those agents worked in isolation is prevalent in computer science and business circles. Here we consider a primordial form of cooperation - imitative learning - that allows an effective exchange of information between agents, which are viewed as the processing units of a social intelligence system or collective brain. In particular, we use agent-based simulations to study the performance of a group of agents in solving a cryptarithmetic problem. An agent can either perform local random moves to explore the solution space of the problem or imitate a model agent - the best performing agent in its influence network. There is a trade-off between the...
The 'Collective Intelligence' (COIN) framework concerns the design of collectives of reinforcement-l...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
The notion that cooperation can aid a group of agents to solve problems more efficiently than if tho...
The notion that cooperation can aid a group of agents to solve problems more efficiently than if tho...
Social collaboration has been shown to facilitate problemsolving activity in diverse sets of environ...
Natural systems and processes have been one of the main sources of inspiration in the development of...
Abstract. In a persistent multi-agent system, it should be possible for new agents to benefit from t...
Abstract. In a persistent multi-agent system, it should be possible for new agents to bene¯t from t...
Within the framework of ensemble methods, we investigate on a compatible learning scheme, denoted as...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
Imitation is a powerful mechanism the human brain applies to extend its repertoire of solutions and ...
The design of a Multi-Agent System (MAS) to perform well on a collective task is non-trivial. Straig...
Humans do not always make rational choices, a fact that experimental economics is putting on solid g...
The application of decision making and learning algorithms to multi-agent systems presents many inte...
The 'Collective Intelligence' (COIN) framework concerns the design of collectives of reinforcement-l...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...
The notion that cooperation can aid a group of agents to solve problems more efficiently than if tho...
The notion that cooperation can aid a group of agents to solve problems more efficiently than if tho...
Social collaboration has been shown to facilitate problemsolving activity in diverse sets of environ...
Natural systems and processes have been one of the main sources of inspiration in the development of...
Abstract. In a persistent multi-agent system, it should be possible for new agents to benefit from t...
Abstract. In a persistent multi-agent system, it should be possible for new agents to bene¯t from t...
Within the framework of ensemble methods, we investigate on a compatible learning scheme, denoted as...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
Imitation is a powerful mechanism the human brain applies to extend its repertoire of solutions and ...
The design of a Multi-Agent System (MAS) to perform well on a collective task is non-trivial. Straig...
Humans do not always make rational choices, a fact that experimental economics is putting on solid g...
The application of decision making and learning algorithms to multi-agent systems presents many inte...
The 'Collective Intelligence' (COIN) framework concerns the design of collectives of reinforcement-l...
In this paper we discuss how agents can learn to do things by imitating other agents. Especially we ...
We present a socially inspired approach that allows agents in Multi-Agent Systems to speed up their ...