Attributes of an object contain its fundamental properties. Attribute data is the main source of clustering information. Although relationship data is an extrinsic property of objects and is at least as important as attribute data, most clustering methods process only one type of characteristic data. However, analyzing attribute and relationship data together in applications such as market segmentation, social network segmentation, and image segmentation can lead to better and more meaningful clustering. In this study, we describe a new algorithm that combines attribute and relationship data for joint clustering analysis. An experimental evaluation demonstrates the usefulness and accuracy of the proposed algorithm when applied to image segm...
By clustering one seeks to partition a given set of points into a number of clusters such that point...
Abstract — Clustering is a technique of data mining. It aims at finding natural partitioning of data...
It is important to discover relationships between attributes being used to predict a class attribute...
Attribute data and relationship data are two principal types of data, representing the intrinsic and...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
A large class of clustering problems can be formulated as an optimizational problem in which the bes...
Clustering analysis is currently one of well-developed branches in data mining technology which is s...
A large class of clustering problems can be formulated as an optimizational prob-lem in which the be...
A new procedure is proposed for clustering attribute value data. When used in conjunction with conve...
Grouping objects that are described by attributes, or clustering is a central notion in data mining....
In recent years, a rapidly increasing amount of data is collected and stored for various application...
Data clustering is the task of detecting patterns in a set of data. Most algorithms take non-relatio...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
The task of clustering is a fundamental task in many important human endeavors. In machine learning ...
By clustering one seeks to partition a given set of points into a number of clusters such that point...
Abstract — Clustering is a technique of data mining. It aims at finding natural partitioning of data...
It is important to discover relationships between attributes being used to predict a class attribute...
Attribute data and relationship data are two principal types of data, representing the intrinsic and...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
A large class of clustering problems can be formulated as an optimizational problem in which the bes...
Clustering analysis is currently one of well-developed branches in data mining technology which is s...
A large class of clustering problems can be formulated as an optimizational prob-lem in which the be...
A new procedure is proposed for clustering attribute value data. When used in conjunction with conve...
Grouping objects that are described by attributes, or clustering is a central notion in data mining....
In recent years, a rapidly increasing amount of data is collected and stored for various application...
Data clustering is the task of detecting patterns in a set of data. Most algorithms take non-relatio...
Unsupervised image clustering is a challenging and often ill-posed problem. Existing image descripto...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
The task of clustering is a fundamental task in many important human endeavors. In machine learning ...
By clustering one seeks to partition a given set of points into a number of clusters such that point...
Abstract — Clustering is a technique of data mining. It aims at finding natural partitioning of data...
It is important to discover relationships between attributes being used to predict a class attribute...