International audienceGenetic Programming (GP) has been shown to be a good method of predicting functions that solve inverse problems. In this context, a solution given by GP generally consists of a sole predictor. In contrast, Stack-based GP systems manipulate structures containing several predictors, which can be considered as teams of predictors. Work in Machine Learning reports that combining predictors gives good results in terms of both quality and robustness. In this paper, we use Stack-based GP to study different cooperations between predictors. First, preliminary tests and parameter tuning are performed on two GP benchmarks. Then, the system is applied to a real-world inverse problem. A comparative study with standard methods has s...
In this paper we proposed stated, a genetic algorithm is a programming technique that mimics biologi...
Centre for Intelligent Systems and their Applicationsstudentship 9314680This thesis is an investigat...
Re, A., Vanneschi, L., & Castelli, M. (2019). Universal learning machine with genetic programming. I...
International audienceGenetic Programming (GP) has been shown to be a good method of predicting func...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
Evolutionary Algorithms (EA) are search methods working iteratively on a population of potential sol...
International audienceThis paper addresses the resolution, by Genetic Programming (GP) methods, of a...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
Genetic Algorithms are bio-inspired metaheuristics that solve optimization problems; they are evolut...
In this paper, we introduce a genetic algorithm-based training mechanism (HGT-GAME) toward the autom...
The relatively ‘new’ field of genetic programming has received a lot of attention during the last fe...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
Genetic Algorithms (GA) is a family of search algorithms based on the mechanics of natural selectio...
In this paper we proposed stated, a genetic algorithm is a programming technique that mimics biologi...
Centre for Intelligent Systems and their Applicationsstudentship 9314680This thesis is an investigat...
Re, A., Vanneschi, L., & Castelli, M. (2019). Universal learning machine with genetic programming. I...
International audienceGenetic Programming (GP) has been shown to be a good method of predicting func...
This paper reports on the evolution of GP teams in different classiffication and regression problems...
Evolutionary Algorithms (EA) are search methods working iteratively on a population of potential sol...
International audienceThis paper addresses the resolution, by Genetic Programming (GP) methods, of a...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
The paper tackles the application of evolutionary multi-agent computing to solving inverse problems....
Genetic Algorithms are bio-inspired metaheuristics that solve optimization problems; they are evolut...
In this paper, we introduce a genetic algorithm-based training mechanism (HGT-GAME) toward the autom...
The relatively ‘new’ field of genetic programming has received a lot of attention during the last fe...
Fitness functions based on test cases are very common in Genetic Programming (GP). This process can ...
Genetic Algorithms (GA) is a family of search algorithms based on the mechanics of natural selectio...
In this paper we proposed stated, a genetic algorithm is a programming technique that mimics biologi...
Centre for Intelligent Systems and their Applicationsstudentship 9314680This thesis is an investigat...
Re, A., Vanneschi, L., & Castelli, M. (2019). Universal learning machine with genetic programming. I...