Measuring graph clustering quality remains an open problem. Here, we introduce three statistical measures to address the problem. We empirically explore their behavior under a number of stress test scenarios and compare it to the commonly used modularity and conductance. Our measures are robust, immune to resolution limit, easy to intuitively interpret and also have a formal statistical interpretation. Our empirical stress test results confirm that our measures compare favorably to the established ones. In particular, they are shown to be more responsive to graph structure, less sensitive to sample size and breakdowns during numerical implementation and less sensitive to uncertainty in connectivity. These features are especially important i...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
A promising approach to graph clustering is based on the intuitive notion of intracluster density ve...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
Due to the growing presence of large-scale and streaming graphs such as social networks, graph sampl...
An increasing number of networks are becoming large-scale and continuously growing in nature, such t...
Notions of community quality underlie the clustering of networks. While studies surrounding network ...
Graph clustering is one of the constantly actual data analysis problems. There are various statement...
Overview Notions of community quality underlie the clustering of networks. While studies surrounding...
A promising approach to compare graph clusterings is based on using measurements for calculati...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
We study potential biases of popular network clustering quality metrics, such as those based on the ...
We study the scenario of graph-based clustering algorithms such as spectral clustering. Given a set ...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
We study the scenario of graph-based clustering algorithms such as spectral clustering. Given a set ...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
A promising approach to graph clustering is based on the intuitive notion of intracluster density ve...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
Due to the growing presence of large-scale and streaming graphs such as social networks, graph sampl...
An increasing number of networks are becoming large-scale and continuously growing in nature, such t...
Notions of community quality underlie the clustering of networks. While studies surrounding network ...
Graph clustering is one of the constantly actual data analysis problems. There are various statement...
Overview Notions of community quality underlie the clustering of networks. While studies surrounding...
A promising approach to compare graph clusterings is based on using measurements for calculati...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
We study potential biases of popular network clustering quality metrics, such as those based on the ...
We study the scenario of graph-based clustering algorithms such as spectral clustering. Given a set ...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
We study the scenario of graph-based clustering algorithms such as spectral clustering. Given a set ...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
A promising approach to graph clustering is based on the intuitive notion of intracluster density ve...