The performance of data clustering algorithms is mainly dependent on their ability to balance between the exploration and exploitation of the search process. Although some data clustering algorithms have achieved reasonable quality solutions for some datasets, their performance across real-life datasets could be improved. This paper proposes an adaptive memetic differential evolution optimisation algorithm (AMADE) for addressing data clustering problems. The memetic algorithm (MA) employs an adaptive differential evolution (DE) mutation strategy, which can offer superior mutation performance across many combinatorial and continuous problem domains. By hybridising an adaptive DE mutation operator with the MA, we propose that it can lead to f...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...
The text clustering is considered as one of the most effective text document analysis methods, which...
This paper applies the Differential Evolution (DE) algorithm to the task of automatic fuzzy clusteri...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of geneti...
The applications of recently developed meta-heuristics in cluster analysis, such as particle swarm o...
Clustering is deemed one of the most difficult and challenging problems in machine learning. In this...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of Geneti...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Many partitional clustering algorithms based on genetic algorithms (GA) have been proposed to tackle...
Partitional clustering poses a NP hard search problem for non-trivial problems. While genetic algori...
In this paper, a hybrid approach that combines a population-based method, adaptive elitist different...
Abstract—According to the defects of classical k-means clustering algorithm such as sensitive to the...
Clustering is the task of discovering group ofsimilar objects or items and there have been manyappli...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...
The text clustering is considered as one of the most effective text document analysis methods, which...
This paper applies the Differential Evolution (DE) algorithm to the task of automatic fuzzy clusteri...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of geneti...
The applications of recently developed meta-heuristics in cluster analysis, such as particle swarm o...
Clustering is deemed one of the most difficult and challenging problems in machine learning. In this...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of Geneti...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Many partitional clustering algorithms based on genetic algorithms (GA) have been proposed to tackle...
Partitional clustering poses a NP hard search problem for non-trivial problems. While genetic algori...
In this paper, a hybrid approach that combines a population-based method, adaptive elitist different...
Abstract—According to the defects of classical k-means clustering algorithm such as sensitive to the...
Clustering is the task of discovering group ofsimilar objects or items and there have been manyappli...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...
This paper provides an analysis of the population clustering in a novel Success-History based Adapti...