© Springer International Publishing AG 2017. Graph is a powerful tool to model interactions in disparate applications, and how to assess the structure of a graph is an essential task across all the domains. As a classic measure to characterize the connectivity of graphs, clustering coefficient and its variants are of particular interest in graph structural analysis. However, the largest of today’s graphs may have nodes and edges in billion scale, which makes the simple task of computing clustering coefficients quite complicated and expensive. Thus, approximate solutions have attracted much attention from researchers recently. However, they only target global and binned degree wise clustering coefficient estimation, and their techniques are ...
Graphs are used to model interactions in a variety of contexts, and there is a growing need to quick...
The clustering coefficient of an unweighted network has been extensively used to quantify how tightl...
Abstract. We study the design of local algorithms for massive graphs. A local graph algorithm is one...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Abstract. Graphs and networks are used to model interactions in a variety of contexts. There is a gr...
Efficiently searching top-k representative vertices is crucial for understanding the structure of la...
Abstract. Graphs and networks are used to model interactions in a variety of contexts. There is a gr...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
We present random sampling algorithms that with probability at least 1 - δ compute a (1 ± ε)-approxi...
Abstract Graph clustering, a fundamental technique in network science for understanding structures i...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Graphs are used to model interactions in a variety of contexts, and there is a growing need to quick...
The clustering coefficient of an unweighted network has been extensively used to quantify how tightl...
Abstract. We study the design of local algorithms for massive graphs. A local graph algorithm is one...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
Abstract. Graphs and networks are used to model interactions in a variety of contexts. There is a gr...
Efficiently searching top-k representative vertices is crucial for understanding the structure of la...
Abstract. Graphs and networks are used to model interactions in a variety of contexts. There is a gr...
Since computational complexities of the existing methods such as classic GN algorithm are too costly...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
We present random sampling algorithms that with probability at least 1 - δ compute a (1 ± ε)-approxi...
Abstract Graph clustering, a fundamental technique in network science for understanding structures i...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Graphs are used to model interactions in a variety of contexts, and there is a growing need to quick...
The clustering coefficient of an unweighted network has been extensively used to quantify how tightl...
Abstract. We study the design of local algorithms for massive graphs. A local graph algorithm is one...