Categorical data clustering constitutes an important part of data mining; its relevance has recently drawn attention from several researchers. As a step in data mining, however, clustering encounters the problem of large amount of data to be processed. This article offers a solution for categorical clustering algorithms when working with high volumes of data by means of a method that summarizes the database. This is done using a structure called CM-tree. In order to test our method, the KModes and Click clustering algorithms were used with several databases. Experiments demonstrate that the proposed summarization method improves execution time, without losing clustering quality
Abstract The data stream model is relevant to new classes of applications involving massive datasets...
Clustering data streams can provide critical infor-mation for making decision in real-time. We argue...
Clustering large populations is an important problem when the data contain noise and different shape...
Categorical data clustering constitutes an important part of data mining; its relevance has recentl...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
Abstract — Step by step operations by which we make a group of objects in which attributes of all th...
Categorical data has always posed a challenge in data analysis through clustering. With the increasi...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
Cluster analysis in a large dataset is an interesting challenge in many fields of Science and Engine...
Cluster analysis in a large dataset is an interesting challenge in many fields of Science and Engine...
Abstract For a book, its title and abstract provide a good first impression of what to expect from i...
Clustering is a technique which aims to partition a given dataset of objects into groups of similar ...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
Clustering is widely used to explore and understand large collections of data. In this thesis, we in...
Abstract The data stream model is relevant to new classes of applications involving massive datasets...
Clustering data streams can provide critical infor-mation for making decision in real-time. We argue...
Clustering large populations is an important problem when the data contain noise and different shape...
Categorical data clustering constitutes an important part of data mining; its relevance has recentl...
Abstract:- Clustering constitutes an important task inside the fields of Pattern Recognition and Dat...
Abstract — Step by step operations by which we make a group of objects in which attributes of all th...
Categorical data has always posed a challenge in data analysis through clustering. With the increasi...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
Cluster analysis in a large dataset is an interesting challenge in many fields of Science and Engine...
Cluster analysis in a large dataset is an interesting challenge in many fields of Science and Engine...
Abstract For a book, its title and abstract provide a good first impression of what to expect from i...
Clustering is a technique which aims to partition a given dataset of objects into groups of similar ...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
The exploratory nature of data analysis and data mining makes clustering one of the most usual tasks...
Clustering is widely used to explore and understand large collections of data. In this thesis, we in...
Abstract The data stream model is relevant to new classes of applications involving massive datasets...
Clustering data streams can provide critical infor-mation for making decision in real-time. We argue...
Clustering large populations is an important problem when the data contain noise and different shape...