Interpreting communities based on the evolution of a dynamic attributed network
G\"unce Orman (BIT Lab), Vincent Labatut (LIA), Marc Plantevit, (LIRIS), Jean-Fran\c{c}ois Boulicaut (LIRIS)

TL;DR
This paper presents a novel approach to interpret communities in dynamic attributed networks by identifying characteristic features through sequence-based representations and pattern analysis, enhancing understanding beyond mere detection.
Contribution
It introduces a formal definition of community interpretation and a method leveraging sequence patterns to characterize communities in dynamic attributed networks.
Findings
Effective on artificial dynamic networks
Validated on real-world collaboration and social networks
Provides characteristic community features
Abstract
Many methods have been proposed to detect communities, not only in plain, but also in attributed, directed or even dynamic complex networks. From the modeling point of view, to be of some utility, the community structure must be characterized relatively to the properties of the studied system. However, most of the existing works focus on the detection of communities, and only very few try to tackle this interpretation problem. Moreover, the existing approaches are limited either by the type of data they handle, or by the nature of the results they output. In this work, we see the interpretation of communities as a problem independent from the detection process, consisting in identifying the most characteristic features of communities. We give a formal definition of this problem and propose a method to solve it. To this aim, we first define a sequence-based representation of networks,…
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