Comparing methods for comparing networks

Keywords

Statistical learning
Code:
27/2019
Title:
Comparing methods for comparing networks
Date:
Thursday 11th July 2019
Author(s):
Tantardini, M.; Ieva, F.; Tajoli, L.; Piccardi, C.
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Abstract:
With the impressive growth of available data and the flexibility of network modelling, the problem of devising effective quantitative methods for the comparison of networks arises. Plenty of such methods have been designed to accomplish this task: most of them deal with undirected and unweighted networks only, but a few are capable of handling directed and/or weighted networks too, thus properly exploiting richer information. In this work, we contribute to the effort of comparing the different methods for comparing networks and providing a guide for the selection of an appropriate one. First, we review and classify a collection of network comparison methods, highlighting the criteria they are based on and their advantages and drawbacks. Then, we test the methods on synthetic networks and we asses their usability and the meaningfulness of the results they provide. Finally, we apply the methods to two real-world datasets, the European Air Transportation Network and the FAO Trade Network, in order to discuss the results that can be drawn from this type of analysis.
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Scientific Reports, 9, 17557 doi:10.1038/s41598-019-53708-y