The paper presents research results referring to the use of flow networks and ant colony algorithm in the problem of generating decision rules for the cluster analysis process. The experiments showed that proposed approach may prove particularly important, when we are dealing with data sets represented by categorical variables associated with the same number of objects for each variance. There are many cases when we have no knowledge about the allocation group of individual data received and in addition defining any metric to measure the distance between observations, does not give any satisfactory results. Meanwhile, the selection of features and the choice of the performance metric is the basic condition for the use of most known classifi...
This article highlights the use of qualitative data as methodological tools in cluster analysis, fol...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
The paper presents research results referring to the use of flow networks and ant colony algorithm i...
The paper is devoted to the problem of mining graph data. The goal of this process is to discover po...
Abstract: This article made a brief comparative survey of modern cluster-ing algorithms quantitative...
Ant-based clustering and sorting is a nature-inspired heuristic for general clustering tasks. It ha...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
AbstractThis paper intends to propose a novel clustering method, ant K-means (AK) algorithm. AK algo...
Abstract. In this paper we introduce a new kind of flow networks, called flow graphs, different to t...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm, flowbca, w...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm, flowbca, w...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm written in ...
International audienceAs an important technique for data mining, clustering often consists in formin...
Clustering analysis is an important function of data mining. Various clustering methods are need for...
This article highlights the use of qualitative data as methodological tools in cluster analysis, fol...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...
The paper presents research results referring to the use of flow networks and ant colony algorithm i...
The paper is devoted to the problem of mining graph data. The goal of this process is to discover po...
Abstract: This article made a brief comparative survey of modern cluster-ing algorithms quantitative...
Ant-based clustering and sorting is a nature-inspired heuristic for general clustering tasks. It ha...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
AbstractThis paper intends to propose a novel clustering method, ant K-means (AK) algorithm. AK algo...
Abstract. In this paper we introduce a new kind of flow networks, called flow graphs, different to t...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm, flowbca, w...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm, flowbca, w...
In this article, we introduce the Stata implementation of a flow-based cluster algorithm written in ...
International audienceAs an important technique for data mining, clustering often consists in formin...
Clustering analysis is an important function of data mining. Various clustering methods are need for...
This article highlights the use of qualitative data as methodological tools in cluster analysis, fol...
This work is an overview of some of the most frequently used algorithms for cluster analysis and som...
The clustering algorithms have evolved over the last decade. With the continuous success of natural ...