Exploring the structure and function of temporal networks with dynamic graphlets
Yuriy Hulovatyy, Huili Chen, Tijana Milenkovic

TL;DR
This paper introduces dynamic graphlets, a novel method for analyzing temporal networks that overcomes limitations of existing motif-based approaches, providing better characterization of network structure and function.
Contribution
The paper develops a new theory of dynamic graphlets for temporal network analysis, surpassing existing motif-based methods in complexity handling and null model dependence.
Findings
Dynamic graphlets outperform static graphlets in characterizing temporal networks.
The approach effectively captures the structure and function of entire networks and individual nodes.
It overcomes limitations of existing temporal motif methods.
Abstract
With the growing amount of available temporal real-world network data, an important question is how to efficiently study these data. One can simply model a temporal network as either a single aggregate static network, or as a series of time-specific snapshots, each of which is an aggregate static network over the corresponding time window. The advantage of modeling the temporal data in these two ways is that one can use existing well established methods for static network analysis to study the resulting aggregate network(s). Here, we develop a novel approach for studying temporal network data more explicitly. We base our methodology on the well established notion of graphlets (subgraphs), which have been successfully used in numerous contexts in static network research. Here, we take the notion of static graphlets to the next level and develop new theory needed to allow for…
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Taxonomy
TopicsComplex Network Analysis Techniques · Functional Brain Connectivity Studies · Mental Health Research Topics
