Clustering and community detection in directed networks: A survey
Networks (or graphs) appear as dominant structures in diverse domains, including
sociology, biology, neuroscience and computer science. In most of the aforementioned …
sociology, biology, neuroscience and computer science. In most of the aforementioned …
Community detection in graphs
S Fortunato - Physics reports, 2010 - Elsevier
The modern science of networks has brought significant advances to our understanding of
complex systems. One of the most relevant features of graphs representing real systems is …
complex systems. One of the most relevant features of graphs representing real systems is …
Metrics for community analysis: A survey
Detecting and analyzing dense groups or communities from social and information networks
has attracted immense attention over the last decade due to its enormous applicability in …
has attracted immense attention over the last decade due to its enormous applicability in …
Resolution limit in community detection
Detecting community structure is fundamental for uncovering the links between structure and
function in complex networks and for practical applications in many disciplines such as …
function in complex networks and for practical applications in many disciplines such as …
[책][B] Modern algorithms of cluster analysis
ST Wierzchoń, MA Kłopotek - 2018 - Springer
This chapter characterises the scope of this book. It explains the reasons why one should be
interested in cluster analysis, lists major application areas, basic theoretical and practical …
interested in cluster analysis, lists major application areas, basic theoretical and practical …
Statistical mechanics of community detection
Starting from a general ansatz, we show how community detection can be interpreted as
finding the ground state of an infinite range spin glass. Our approach applies to weighted …
finding the ground state of an infinite range spin glass. Our approach applies to weighted …
On modularity clustering
Modularity is a recently introduced quality measure for graph clusterings. It has immediately
received considerable attention in several disciplines, particularly in the complex systems …
received considerable attention in several disciplines, particularly in the complex systems …
Community detection via maximization of modularity and its variants
In this paper, we first discuss the definition of modularity (Q) used as a metric for community
quality and then we review the modularity maximization approaches which were used for …
quality and then we review the modularity maximization approaches which were used for …
Stability of graph communities across time scales
The complexity of biological, social, and engineering networks makes it desirable to find
natural partitions into clusters (or communities) that can provide insight into the structure of …
natural partitions into clusters (or communities) that can provide insight into the structure of …
Quantitative function for community detection
We propose a quantitative function for community partition—ie, modularity density or D
value. We demonstrate that this quantitative function is superior to the widely used …
value. We demonstrate that this quantitative function is superior to the widely used …