Bayesian Detection of Mesoscale Structures in Pathway Data on Graphs

01/16/2023
by   Luka V. Petrovic, et al.
0

Mesoscale structures are an integral part of the abstraction and analysis of complex systems. They reveal a node's function in the network, and facilitate our understanding of the network dynamics. For example, they can represent communities in social or citation networks, roles in corporate interactions, or core-periphery structures in transportation networks. We usually detect mesoscale structures under the assumption of independence of interactions. Still, in many cases, the interactions invalidate this assumption by occurring in a specific order. Such patterns emerge in pathway data; to capture them, we have to model the dependencies between interactions using higher-order network models. However, the detection of mesoscale structures in higher-order networks is still under-researched. In this work, we derive a Bayesian approach that simultaneously models the optimal partitioning of nodes in groups and the optimal higher-order network dynamics between the groups. In synthetic data we demonstrate that our method can recover both standard proximity-based communities and role-based groupings of nodes. In synthetic and real world data we show that it can compete with baseline techniques, while additionally providing interpretable abstractions of network dynamics.

READ FULL TEXT
research
08/11/2020

Hypergraph reconstruction from network data

Networks can describe the structure of a wide variety of complex systems...
research
03/26/2020

Hypernetwork Science: From Multidimensional Networks to Computational Topology

As data structures and mathematical objects used for complex systems mod...
research
12/29/2019

Aligning Statistical Dynamics Captures Biological Network Functioning

Empirical studies of graphs have contributed enormously to our understan...
research
03/30/2022

Community Integration Algorithms (CIAs) for Dynamical Systems on Networks

Dynamics of large-scale network processes underlies crucial phenomena ra...
research
06/21/2019

Simplex2Vec embeddings for community detection in simplicial complexes

Topological representations are rapidly becoming a popular way to captur...
research
02/02/2017

HoNVis: Visualizing and Exploring Higher-Order Networks

Unlike the conventional first-order network (FoN), the higher-order netw...
research
03/30/2022

Quantifying the presence/absence of meso-scale structures in networks

Meso-scale structures are network features where nodes with similar prop...

Please sign up or login with your details

Forgot password? Click here to reset