In many segmentation applications, data objects are often clustered based purely on attribute-level similarities. This practice has neglected the useful information that resides in the link structure among data objects and the valuable expert domain knowledge about the desirable cluster assignment. Link structure can carry worthy information about the similarity between data objects (e.g. citation), and we should also incorporate the existing domain information on preferred outcome when segmenting data. In this paper, we investigate the segmentation problem combining these three sources of information, which has not been addressed in the existing literature. We propose a segmentation method for directed graphs that incorporates the attribut...
© 2017 ACM. Graphs are popularly used to represent objects with shared dependency relationships. To ...
Abstract-This paper describes an interactive tool for constrained clustering that helps users to sel...
In recent years, a rapidly increasing amount of data is collected and stored for various application...
In knowledge bases or information extraction results, differently expressed relations can be semanti...
Selecting a suitable proximity measure is one of the fundamental tasks in clustering. How to effecti...
Clustering methods partition a given set of instances into subsets (clusters) such that the instance...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
Clustering has always been an exploratory but critical step in the knowledge discovery process. Ofte...
Clustering is a well-defined problem class in data mining, and many variations of it exists. However...
Grouping objects that are described by attributes, or clustering is a central notion in data mining....
Traditional data mining methods for clustering only use unlabeled data objects as input. The aim of ...
Graph clustering has generally concerned itself with cluster-ing undirected graphs; however the grap...
Witnessing the tremendous development of machine learning technology, emerging machine learning appl...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
Clustering requires the user to define a distance metric, select a clustering algorithm, and set the...
© 2017 ACM. Graphs are popularly used to represent objects with shared dependency relationships. To ...
Abstract-This paper describes an interactive tool for constrained clustering that helps users to sel...
In recent years, a rapidly increasing amount of data is collected and stored for various application...
In knowledge bases or information extraction results, differently expressed relations can be semanti...
Selecting a suitable proximity measure is one of the fundamental tasks in clustering. How to effecti...
Clustering methods partition a given set of instances into subsets (clusters) such that the instance...
We have developed a novel algorithm for cluster analysis that is based on graph theoretic techniques...
Clustering has always been an exploratory but critical step in the knowledge discovery process. Ofte...
Clustering is a well-defined problem class in data mining, and many variations of it exists. However...
Grouping objects that are described by attributes, or clustering is a central notion in data mining....
Traditional data mining methods for clustering only use unlabeled data objects as input. The aim of ...
Graph clustering has generally concerned itself with cluster-ing undirected graphs; however the grap...
Witnessing the tremendous development of machine learning technology, emerging machine learning appl...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
Clustering requires the user to define a distance metric, select a clustering algorithm, and set the...
© 2017 ACM. Graphs are popularly used to represent objects with shared dependency relationships. To ...
Abstract-This paper describes an interactive tool for constrained clustering that helps users to sel...
In recent years, a rapidly increasing amount of data is collected and stored for various application...