In this paper, an application of Evolutionary Multiagent Systems (EMAS) and its memetic version to the optimization of advisory strategy (in this case, Sudoku advisory strategy) is considered. The problem is tackled using an EMAS, which has already proven as a versatile optimization technique. Results obtained using EMAS and Parallel Evolutionary Algorithm (PEA) are compared. After giving an insight to the possibilities of decision support in Sudoku solving, an exemplary strategy is defined. Then EMAS and its memetic versions are discussed, and experimental results concerning comparison of EMAS and PEA presented
This book addresses agent-based computing, concentrating in particular on evolutionary multi-agent s...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
AbstractHybridizing agent-based paradigm with evolutionary computation can enhance the field of meta...
In this paper an Evolutionary Multi-agent system based computing processis subjected to detailed ana...
AbstractThis paper studies techniques to reduce the search space when an optimizer seeks an optimal ...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Over recent years, there has been increasing interest of the research community towards evolutionary...
Over recent years, there has been increasing interest of the research community towards evolutionary...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The object of research is multi-agent systems based on Deep Reinforcement Learning algorithms and an...
The object of research is multi-agent systems based on Deep Reinforcement Learning algorithms and an...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Niching is a group of techniques used in evolutionary algorithms, useful in several types of problem...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
Many real-world decision processes require solving optimization problems which may involve differen...
This book addresses agent-based computing, concentrating in particular on evolutionary multi-agent s...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
AbstractHybridizing agent-based paradigm with evolutionary computation can enhance the field of meta...
In this paper an Evolutionary Multi-agent system based computing processis subjected to detailed ana...
AbstractThis paper studies techniques to reduce the search space when an optimizer seeks an optimal ...
AbstractThis paper deals with a concept of memetic search in agent-based evolutionary computation. I...
Over recent years, there has been increasing interest of the research community towards evolutionary...
Over recent years, there has been increasing interest of the research community towards evolutionary...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
The object of research is multi-agent systems based on Deep Reinforcement Learning algorithms and an...
The object of research is multi-agent systems based on Deep Reinforcement Learning algorithms and an...
Niching is a group of techniques used in evolutionary algorithms, useful inseveral types of problems...
Niching is a group of techniques used in evolutionary algorithms, useful in several types of problem...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
Many real-world decision processes require solving optimization problems which may involve differen...
This book addresses agent-based computing, concentrating in particular on evolutionary multi-agent s...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
AbstractHybridizing agent-based paradigm with evolutionary computation can enhance the field of meta...