How a network breaks up into subnetworks or communities is of wide interest. Here we show that vertices connected to many other vertices across a network can disturb the community structures of otherwise ordered networks, introducing noise. We investigate strategies to identify and remove noisy vertices (“violators”) and develop a quantitative approach using statistical breakpoints to identify when the largest enhancement to a modularity measure is achieved. We show that removing nodes thus identified reduces noise in detected community structures for a range of different types of real networks in software systems and in biological systems
The problem of community detection is relevant in many disciplines of science and modularity optimiz...
Current approaches to community detection in social networks usually neglect nodes, which we call ta...
Complex systems surround us in our everyday lives and their understanding can bring crucial insights...
The identification of modular structures is essential for characterizing real networks formed by a m...
The community structure of a complex network can be determined by finding the partitioning of its n...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
Networks are a widely used tool for investigating the large-scale connectivity structure in complex ...
We present a network community-detection technique based on properties that emerge from a nature-ins...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Community detection has been widely studied and implemented across various research domains such as ...
Current approaches to dynamic community detection in complex networks can fail to identify multi-sca...
Community detection is a commonly used technique for identifying groups in a network based on simila...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Community structures are ubiquitous in various complex networks, implying that the networks commonly...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
The problem of community detection is relevant in many disciplines of science and modularity optimiz...
Current approaches to community detection in social networks usually neglect nodes, which we call ta...
Complex systems surround us in our everyday lives and their understanding can bring crucial insights...
The identification of modular structures is essential for characterizing real networks formed by a m...
The community structure of a complex network can be determined by finding the partitioning of its n...
A network is said to exhibit community structure if the nodes of the network can be easily grouped i...
Networks are a widely used tool for investigating the large-scale connectivity structure in complex ...
We present a network community-detection technique based on properties that emerge from a nature-ins...
We introduce an ensemble learning scheme and a new metric for community detection in complex network...
Community detection has been widely studied and implemented across various research domains such as ...
Current approaches to dynamic community detection in complex networks can fail to identify multi-sca...
Community detection is a commonly used technique for identifying groups in a network based on simila...
Abstract. Community detection is the process of assigning nodes and links in significant communities...
Community structures are ubiquitous in various complex networks, implying that the networks commonly...
Many complex systems can be modeled as complex networks, so we can use network theory to study this ...
The problem of community detection is relevant in many disciplines of science and modularity optimiz...
Current approaches to community detection in social networks usually neglect nodes, which we call ta...
Complex systems surround us in our everyday lives and their understanding can bring crucial insights...