Dynamic spectral co-clustering of directed networks to unveil latent community paths in VAR-type models
Younghoon Kim, Changryong Baek

TL;DR
This paper introduces a spectral co-clustering method for dynamic directed networks in VAR models, revealing evolving latent community structures and improving understanding of complex network dependencies.
Contribution
It proposes a novel methodology combining spectral co-clustering with VAR models to uncover dynamic community paths in directed networks, validated by theoretical and empirical results.
Findings
Effectively captures cyclic evolution of communities
Identifies transient community trajectories
Demonstrates applicability to economic and financial data
Abstract
Identifying network Granger causality in large vector autoregressive (VAR) models enhances explanatory power by capturing complex dependencies among variables. This study proposes a methodology that explores latent community structures to uncover underlying network dynamics, rather than relying on sparse coefficient estimation for network construction. A dynamic network framework embeds directed connectivity in the transition matrices of VAR-type models, allowing the tracking of evolving community structures over time, called seasons. To account for network directionality, degree-corrected stochastic co-block models are fitted for each season, then a combination of spectral co-clustering and singular vector smoothing is utilized to refine transitions between latent communities. Periodic VAR (PVAR) and vector heterogeneous autoregressive (VHAR) models are adopted as alternatives to…
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