This paper presents a novel formulation of Multi Agent Collaborative Search, for multi-objective optimization, based on Tchebycheff decomposition. A population of agents combines heuristics that aim at exploring the search space both globally (social moves) and in a neighborhood of each agent (individualistic moves). In this novel formulation the selection process is based on a combination of Tchebycheff scalarization and Pareto dominance. Furthermore, while in the previous implementation, social actions were applied to the whole population of agents and individualistic actions only to an elite sub-population, in this novel formulation this mechanism is inverted. The novel agent-based algorithm is tested at first on a standard benchmark of ...
Combinatorial optimization problems confront us with the problem of searching in a huge configuratio...
We elaborate a multi-agent based optimization method for combinatorial optimization problems named M...
Abstract. In this paper we explore the use of multi-agent systems to tackle opti-mization problems i...
This paper presents a novel formulation of Multi Agent Collaborative Search, for multi-objective opt...
This paper presents a novel formulation of Multi Agent Collaborative Search for multiobjective optim...
This article presents an algorithm for multi-objective optimization that blends together a number of...
This chapter presents an overview of Multi Agent Collaborative Search (MACS), for multi-objective op...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents a new archiving strategy and some modified search heuristics for the Multi Agent...
this paper we present a new search methodology that we view as a development of intelligent agent ap...
Traditional single-agent search algorithms usually make simplifying assumptions (single search agent...
. Cooperative search is a parallelization strategy for search algorithms where parallelism is obtai...
The purpose of this research is to investigate a model for designing distributed search algorithm ba...
International audienceMulti-goal pathfinding (MGPF) is a problem of searching for a path between an ...
Combinatorial optimization problems confront us with the problem of searching in a huge configuratio...
We elaborate a multi-agent based optimization method for combinatorial optimization problems named M...
Abstract. In this paper we explore the use of multi-agent systems to tackle opti-mization problems i...
This paper presents a novel formulation of Multi Agent Collaborative Search, for multi-objective opt...
This paper presents a novel formulation of Multi Agent Collaborative Search for multiobjective optim...
This article presents an algorithm for multi-objective optimization that blends together a number of...
This chapter presents an overview of Multi Agent Collaborative Search (MACS), for multi-objective op...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents a new archiving strategy and some modified search heuristics for the Multi Agent...
this paper we present a new search methodology that we view as a development of intelligent agent ap...
Traditional single-agent search algorithms usually make simplifying assumptions (single search agent...
. Cooperative search is a parallelization strategy for search algorithms where parallelism is obtai...
The purpose of this research is to investigate a model for designing distributed search algorithm ba...
International audienceMulti-goal pathfinding (MGPF) is a problem of searching for a path between an ...
Combinatorial optimization problems confront us with the problem of searching in a huge configuratio...
We elaborate a multi-agent based optimization method for combinatorial optimization problems named M...
Abstract. In this paper we explore the use of multi-agent systems to tackle opti-mization problems i...