Identifying networks with similar characteristics in a given ensemble, or detecting pattern discontinuities in a temporal sequence of networks, are two examples of tasks that require an effective metric capable of quantifying network (dis)similarity. Here we propose a method based on a global portrait of graph properties built by processing local nodes features. More precisely, a set of dissimilarity measures is defined by elaborating the distributions, over the network, of a few egonet features, namely the degree, the clustering coefficient, and the egonet persistence. The method, which does not require the alignment of the two networks being compared, exploits the statistics of the three features to define one- or multi-dimensional distri...
Abstract Background The recent explosion in biological and other real-world network data has created...
Networks, graphical representations of a system and the relationships between its parts, is an impor...
Due to the availability of the vast amount of graph-structured data generated in various experiment ...
Identifying networks with similar characteristics in a given ensemble, or detecting pattern disconti...
© 2017. This version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/...
Motivation: Network comparison is a computationally intractable problem with important applications ...
With the impressive growth of available data and the flexibility of network modelling, the problem o...
2018 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM)De...
A key issue in social network analysis is related to the comparison between K observed networks. To ...
International audienceTo improve our understanding of connected systems, different tools derived fro...
The degree distribution is an important characteristic of complex networks. In many data analysis ap...
Motivation: Network comparison is a computationally intractable problem with important applica-tions...
Comparison of graph structure is a ubiquitous task in data analysis and machine learning, with diver...
We consider the problem of determining how similar two networks (without known node-correspondences)...
Subject of this dissertation is the assessment of graph similarity. The application context and ulti...
Abstract Background The recent explosion in biological and other real-world network data has created...
Networks, graphical representations of a system and the relationships between its parts, is an impor...
Due to the availability of the vast amount of graph-structured data generated in various experiment ...
Identifying networks with similar characteristics in a given ensemble, or detecting pattern disconti...
© 2017. This version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/...
Motivation: Network comparison is a computationally intractable problem with important applications ...
With the impressive growth of available data and the flexibility of network modelling, the problem o...
2018 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM)De...
A key issue in social network analysis is related to the comparison between K observed networks. To ...
International audienceTo improve our understanding of connected systems, different tools derived fro...
The degree distribution is an important characteristic of complex networks. In many data analysis ap...
Motivation: Network comparison is a computationally intractable problem with important applica-tions...
Comparison of graph structure is a ubiquitous task in data analysis and machine learning, with diver...
We consider the problem of determining how similar two networks (without known node-correspondences)...
Subject of this dissertation is the assessment of graph similarity. The application context and ulti...
Abstract Background The recent explosion in biological and other real-world network data has created...
Networks, graphical representations of a system and the relationships between its parts, is an impor...
Due to the availability of the vast amount of graph-structured data generated in various experiment ...