Overview Notions of community quality underlie the clustering of networks. While studies surrounding network clustering are increasingly common, a precise understanding of the realtionship between different cluster quality metrics is unknown. In this paper, we examine the relationship between stand-alone cluster quality metrics and information recovery metrics through a rigorous analysis of four widely-used network clustering algorithms-Louvain, Infomap, label propagation, and smart local moving. We consider the stand-alone quality metrics of modularity, conductance, and coverage, and we consider the information recovery metrics of adjusted Rand score, normalized mutual information, and a variant of normalized mutual information used in pre...
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
International audienceThe community detection problem is very natural : given a set of people and th...
Notions of community quality underlie the clustering of networks. While studies surrounding network ...
We study potential biases of popular network clustering quality metrics, such as those based on the ...
International audienceMany real world systems can be modeled as networks or graphs. Clustering algor...
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...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
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...
Clustering is a central concept in network theory. Nevertheless, its usual formulation as the cluste...
Clustering has become an increasingly important task in modern application domains. Mostly, the data...
Measuring graph clustering quality remains an open problem. Here, we introduce three statistical mea...
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
International audienceThe community detection problem is very natural : given a set of people and th...
Notions of community quality underlie the clustering of networks. While studies surrounding network ...
We study potential biases of popular network clustering quality metrics, such as those based on the ...
International audienceMany real world systems can be modeled as networks or graphs. Clustering algor...
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...
We investigate properties that intuitively ought to be satisfied by graph clustering quality functio...
Graph clustering, also often referred to as network community detection, is an unsupervised learning...
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...
Clustering is a central concept in network theory. Nevertheless, its usual formulation as the cluste...
Clustering has become an increasingly important task in modern application domains. Mostly, the data...
Measuring graph clustering quality remains an open problem. Here, we introduce three statistical mea...
We provide a systematic approach to validate the results of clustering methods on weighted networks,...
International audienceClustering of a graph is the task of grouping its nodes in such a way that the...
International audienceThe community detection problem is very natural : given a set of people and th...