Experienced users often have useful knowledge and intuition in solving real-world optimization problems. User knowledge can be formulated as inter-variable relationships to assist an optimization algorithm in finding good solutions faster. Such inter-variable interactions can also be automatically learned from high-performing solutions discovered at intermediate iterations in an optimization run - a process called innovization. These relations, if vetted by the users, can be enforced among newly generated solutions to steer the optimization algorithm towards practically promising regions in the search space. Challenges arise for large-scale problems where the number of such variable relationships may be high. This paper proposes an interact...
The flexibility introduced by evolutionary algorithms (EAs) has allowed the use of virtually arbitra...
Intelligent optimization is based on the mechanism of computational intelligence to refine a suitabl...
Metaheuristics in recent years has proven its effectiveness; however, robust algorithms that can sol...
Knowledge-based optimization is a recent direction in evolutionary optimization research which aims ...
It is a conventional wisdom that real world problems seldom occur in isolation. The motivation for t...
Multi-task optimization (MTO) is a novel emerging evolutionary computation paradigm. It focuses on s...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
Deceptive fitness landscapes are a growing concern for evolutionary computation. Recent work has sho...
Real-world optimization problems typically involve multiple objectives to be optimized simultaneousl...
Discovering and utilizing problem domain knowledge is a promising direction towards improving the ef...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
In this paper, we describe an interactive evolutionary algorithm called Interactive WASF-GA to solv...
Discrete optimization problems are usually NP hard. When choosing or designing an algorithm for solv...
Simulation and optimization enables companies to take decision based on data, and allows prescriptiv...
The flexibility introduced by evolutionary algorithms (EAs) has allowed the use of virtually arbitra...
Intelligent optimization is based on the mechanism of computational intelligence to refine a suitabl...
Metaheuristics in recent years has proven its effectiveness; however, robust algorithms that can sol...
Knowledge-based optimization is a recent direction in evolutionary optimization research which aims ...
It is a conventional wisdom that real world problems seldom occur in isolation. The motivation for t...
Multi-task optimization (MTO) is a novel emerging evolutionary computation paradigm. It focuses on s...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
Deceptive fitness landscapes are a growing concern for evolutionary computation. Recent work has sho...
Real-world optimization problems typically involve multiple objectives to be optimized simultaneousl...
Discovering and utilizing problem domain knowledge is a promising direction towards improving the ef...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
In this paper, we describe an interactive evolutionary algorithm called Interactive WASF-GA to solv...
Discrete optimization problems are usually NP hard. When choosing or designing an algorithm for solv...
Simulation and optimization enables companies to take decision based on data, and allows prescriptiv...
The flexibility introduced by evolutionary algorithms (EAs) has allowed the use of virtually arbitra...
Intelligent optimization is based on the mechanism of computational intelligence to refine a suitabl...
Metaheuristics in recent years has proven its effectiveness; however, robust algorithms that can sol...