Data clustering is popular data analysis approaches, which used to organizing data into sensible clusters based on similarity measure, where data within a cluster are similar to each other but dissimilar to that of another cluster. In the recently, the cluster problem has been proven as NP-hard problem, thus, it can be solved with meta-heuristic algorithms, such as the particle swarm optimization (PSO), genetic algorithm (GA), and ant colony optimization (ACO), respectively. This paper proposes an algorithm called Fast Ant Colony Optimization for Clustering (FACOC) to reduce the computation time of Ant Colony Optimization (ACO) in clustering problem. FACOC is developed by the motivation that a redundant computation is occurred in ACO for cl...
Clustering analysis is an important field in data mining, and also one of the current research hotsp...
The clustering problem has been studied by many researchers using various approaches, including tabu...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
Data clustering is popular data analysis approaches, which used to organizing data into sensible clu...
Abstract—This paper proposes a new clustering algorithm based on ant colony to solve the unsupervise...
Abbstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abili...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
Data clustering is a data mining technique that discovers hidden patterns by creating groups (cluste...
Abstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abilit...
This paper presents an ant colony optimization methodology for optimally clustering N objects into K...
A fundamental problem in data clustering is how to determine the correct number of clusters. The k-a...
Ant colony optimization (ACO) is a swarm algorithm inspired by different behaviors of ants. The algo...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
Clustering techniques have received attention in many areas including engineering, medicine, biology...
Clustering analysis is an important field in data mining, and also one of the current research hotsp...
The clustering problem has been studied by many researchers using various approaches, including tabu...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
Data clustering is popular data analysis approaches, which used to organizing data into sensible clu...
Abstract—This paper proposes a new clustering algorithm based on ant colony to solve the unsupervise...
Abbstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abili...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
Data clustering is a data mining technique that discovers hidden patterns by creating groups (cluste...
Abstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abilit...
This paper presents an ant colony optimization methodology for optimally clustering N objects into K...
A fundamental problem in data clustering is how to determine the correct number of clusters. The k-a...
Ant colony optimization (ACO) is a swarm algorithm inspired by different behaviors of ants. The algo...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
Clustering techniques have received attention in many areas including engineering, medicine, biology...
Clustering analysis is an important field in data mining, and also one of the current research hotsp...
The clustering problem has been studied by many researchers using various approaches, including tabu...
In this work we consider spatial clustering problem with no a priori information. The number of clus...