We consider a type of constrained optimization problem, where the violation of a constraint leads to an irrevocable loss, such as breakage of a valuable experimental resource/platform or loss of human life. Such problems are referred to as safe optimization problems (SafeOPs). While SafeOPs have received attention in the machine learning community in recent years, there was little interest in the evolutionary computation (EC) community despite some early attempts between 2009 and 2011. Moreover, there is a lack of acceptable guidelines on how to benchmark different algorithms for SafeOPs, an area where the EC community has significant experience in. Driven by the need for more efficient algorithms and benchmark guidelines for SafeOPs, the o...
Constrained optimization problems can be difficult because their search spaces have properties not c...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
Evolutionary computation (EC), a collective name for a range of metaheuristic black-box optimization...
Abstract Evolutionary Computation (EC), a collective name for a range of metaheuristic black-box opt...
In many machine learning problems, an objective is required to be optimized with respect to some co...
In recent years, the use of Artificial Intelligence (AI) has become prevalent in a large number of s...
The Evolutionary Computation (EC) community over the last 30 years has spent a lot of effort to desi...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
Real-world has many optimization scenarios with multiple constraints and objective functions that ar...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
Evolutionary algorithms (EAs) simulate the natural evolution of species by iteratively applying evol...
Evolutionary algorithms (EAs) are a set of optimization and machine learning techniques that find th...
Constrained optimization problems can be difficult because their search spaces have properties not c...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
Evolutionary computation (EC), a collective name for a range of metaheuristic black-box optimization...
Abstract Evolutionary Computation (EC), a collective name for a range of metaheuristic black-box opt...
In many machine learning problems, an objective is required to be optimized with respect to some co...
In recent years, the use of Artificial Intelligence (AI) has become prevalent in a large number of s...
The Evolutionary Computation (EC) community over the last 30 years has spent a lot of effort to desi...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
Real-world has many optimization scenarios with multiple constraints and objective functions that ar...
Most discrete evolutionary algorithms (EAs) implement elitism, meaning that they make the biological...
Evolutionary algorithms (EAs) simulate the natural evolution of species by iteratively applying evol...
Evolutionary algorithms (EAs) are a set of optimization and machine learning techniques that find th...
Constrained optimization problems can be difficult because their search spaces have properties not c...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...