<div><p>It is important to cluster heterogeneous information networks. A fast clustering algorithm based on an approximate commute time embedding for heterogeneous information networks with a star network schema is proposed in this paper by utilizing the sparsity of heterogeneous information networks. First, a heterogeneous information network is transformed into multiple compatible bipartite graphs from the compatible point of view. Second, the approximate commute time embedding of each bipartite graph is computed using random mapping and a linear time solver. All of the indicator subsets in each embedding simultaneously determine the target dataset. Finally, a general model is formulated by these indicator subsets, and a fast algorithm is...
Information networks, such as biological or social networks, contain groups of related entities, whi...
With the rapid development of online social media, online shop-ping sites and cyber-physical systems...
Random walk was first introduced by Karl Pearson in 1905 and has inspired many research works in dif...
It is important to cluster heterogeneous information networks. A fast clustering algorithm based on ...
Heterogeneous information networks (e.g. bibliographic networks and social media networks) that cons...
A heterogeneous information network (HIN) is one whose objects are of different types and links betw...
Heterogeneous information networks consist of different types of objects and links. They can be foun...
Heterogeneous networks, consisting of multi-type objects coupled with various relations, are ubiquit...
Abstract—With the rapid emergence of the internet world, a lot of information networks become availa...
Abstract. With the exponential growth in the size of data and networks, de-velopment of new and fast...
Abstract. Many real-world data sets, like data from social media or bibliographic data, can be repre...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
We present and analyze the off-line star algorithm for clustering static information systems and the...
Abstract—Clustering of a graph is the task of grouping its nodes in such a way that the nodes within...
A heterogeneous information network (HIN) is one whose nodes model objects of different types and w...
Information networks, such as biological or social networks, contain groups of related entities, whi...
With the rapid development of online social media, online shop-ping sites and cyber-physical systems...
Random walk was first introduced by Karl Pearson in 1905 and has inspired many research works in dif...
It is important to cluster heterogeneous information networks. A fast clustering algorithm based on ...
Heterogeneous information networks (e.g. bibliographic networks and social media networks) that cons...
A heterogeneous information network (HIN) is one whose objects are of different types and links betw...
Heterogeneous information networks consist of different types of objects and links. They can be foun...
Heterogeneous networks, consisting of multi-type objects coupled with various relations, are ubiquit...
Abstract—With the rapid emergence of the internet world, a lot of information networks become availa...
Abstract. With the exponential growth in the size of data and networks, de-velopment of new and fast...
Abstract. Many real-world data sets, like data from social media or bibliographic data, can be repre...
We address the problem of multi-label classification of relational graphs by proposing a framework t...
We present and analyze the off-line star algorithm for clustering static information systems and the...
Abstract—Clustering of a graph is the task of grouping its nodes in such a way that the nodes within...
A heterogeneous information network (HIN) is one whose nodes model objects of different types and w...
Information networks, such as biological or social networks, contain groups of related entities, whi...
With the rapid development of online social media, online shop-ping sites and cyber-physical systems...
Random walk was first introduced by Karl Pearson in 1905 and has inspired many research works in dif...