Abstract—In this paper, we address the problem of generating clusters for a specified type of objects, as well as ranking information for all types of objects based on these clusters in a heterogeneous information graph. A novel clustering framework called RCHIG is proposed that directly generates clusters integrated with ranking. Based on initial K clusters, ranking is applied separately, which serves as a good measure for each cluster. Then, we use a mixture model to decompose each object into a K-dimensional vector, where each dimension is a component coefficient with respect to a cluster, which is measured by rank distribution. Objects then are reassigned to the nearest cluster under the new measure space to improve clustering. As a res...
We present and analyze the star clustering algorithm. We discuss an implementation of this algorithm...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
The objective of data mining is to take out information from large amounts of data and convert it in...
As information networks become ubiquitous, extracting knowl-edge from information networks has becom...
Clustering and community detection provide a concise way of extracting meaningful information from l...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
In an age of increasingly large data sets, investigators in many different disciplines have turned t...
A clustering result needs to be interpreted and evaluated for knowledge discovery. When clustered d...
Random walk was first introduced by Karl Pearson in 1905 and has inspired many research works in dif...
Clustering as an important unsupervised learning technique is widely used to discover the inherent s...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
Clustering as an important unsupervised learning technique is widely used to discover the inherent s...
Cluster analysis of ranking data, which occurs in consumer questionnaires, voting forms or other inq...
Cluster analysis of ranking data, which occurs in consumer questionnaires, voting forms or other inq...
We present and analyze the star clustering algorithm. We discuss an implementation of this algorithm...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
The objective of data mining is to take out information from large amounts of data and convert it in...
As information networks become ubiquitous, extracting knowl-edge from information networks has becom...
Clustering and community detection provide a concise way of extracting meaningful information from l...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Abstract: Clustering is a partition of data into a group of similar or dissimilar data points and ea...
In an age of increasingly large data sets, investigators in many different disciplines have turned t...
A clustering result needs to be interpreted and evaluated for knowledge discovery. When clustered d...
Random walk was first introduced by Karl Pearson in 1905 and has inspired many research works in dif...
Clustering as an important unsupervised learning technique is widely used to discover the inherent s...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
Clustering as an important unsupervised learning technique is widely used to discover the inherent s...
Cluster analysis of ranking data, which occurs in consumer questionnaires, voting forms or other inq...
Cluster analysis of ranking data, which occurs in consumer questionnaires, voting forms or other inq...
We present and analyze the star clustering algorithm. We discuss an implementation of this algorithm...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
The objective of data mining is to take out information from large amounts of data and convert it in...