Scalability is a crucial aspect of designing efficient algorithms. Despite their prevalence, large-scale dynamic optimization problems are not well-studied in the literature. This paper is concerned with designing benchmarks and frameworks for the study of large-scale dynamic optimization problems. We start by a formal analysis of the moving peaks benchmark and show its nonseparable nature irrespective of its number of peaks. We then propose a composite moving peaks benchmark suite with exploitable modularity covering a wide range of scalable partially separable functions suitable for the study of largescale dynamic optimization problems. The benchmark exhibits modularity, heterogeneity, and imbalance features to resemble real-world problem...
Change is an inescapable aspect of natural and artificial systems, and adaptation is central to thei...
Dynamic multi-objective optimization has received increasing attention in recent years. One of strik...
Abstract—In this paper, we propose a new algorithm, named JACC-G, for large scale optimization probl...
Scalability is a crucial aspect of designing efficient algorithms. Despite their prevalence, large-s...
Dynamic changes are an important and inescapable aspect of many real-world optimization problems. De...
Dynamic changes are an important and inescapable aspect of many real-world optimization problems. De...
Scalability of optimization algorithms is a major challenge in coping with the ever-growing size of ...
Bai H, Cheng R, Yazdani D, Tan KC, Jin Y. Evolutionary Large-Scale Dynamic Optimization Using Bileve...
Three major sources of complexity in many real-world problems are size, variable interaction, and in...
Many real-world optimization problems are dynamic. The field of dynamic optimization deals with such...
Cooperative co-evolution (CC) is an explicit means of problem decomposition in multipopulation evolu...
The recent explosion in size and complexity of datasets and the increased availability of computatio...
In the past two decades, different kinds of nature-inspired optimization algorithms have been design...
This paper is the second part of a two-part survey series on large-scale global optimization. The fi...
Multi-population methods are highly effective in solving dynamic optimization problems. Three factor...
Change is an inescapable aspect of natural and artificial systems, and adaptation is central to thei...
Dynamic multi-objective optimization has received increasing attention in recent years. One of strik...
Abstract—In this paper, we propose a new algorithm, named JACC-G, for large scale optimization probl...
Scalability is a crucial aspect of designing efficient algorithms. Despite their prevalence, large-s...
Dynamic changes are an important and inescapable aspect of many real-world optimization problems. De...
Dynamic changes are an important and inescapable aspect of many real-world optimization problems. De...
Scalability of optimization algorithms is a major challenge in coping with the ever-growing size of ...
Bai H, Cheng R, Yazdani D, Tan KC, Jin Y. Evolutionary Large-Scale Dynamic Optimization Using Bileve...
Three major sources of complexity in many real-world problems are size, variable interaction, and in...
Many real-world optimization problems are dynamic. The field of dynamic optimization deals with such...
Cooperative co-evolution (CC) is an explicit means of problem decomposition in multipopulation evolu...
The recent explosion in size and complexity of datasets and the increased availability of computatio...
In the past two decades, different kinds of nature-inspired optimization algorithms have been design...
This paper is the second part of a two-part survey series on large-scale global optimization. The fi...
Multi-population methods are highly effective in solving dynamic optimization problems. Three factor...
Change is an inescapable aspect of natural and artificial systems, and adaptation is central to thei...
Dynamic multi-objective optimization has received increasing attention in recent years. One of strik...
Abstract—In this paper, we propose a new algorithm, named JACC-G, for large scale optimization probl...