TY - JOUR
T1 - Stochastic Gradient Descent-based Inference for Dynamic Network Models with Attractors
AU - Pan, Hancong
AU - Zhu, Xiaojing
AU - Caliskan, Cantay
AU - Christenson, Dino P.
AU - Spiliopoulos, Konstantinos
AU - Walker, Dylan
AU - Kolaczyk, Eric D.
N1 - Publisher Copyright:
© 2025 American Statistical Association and Institute of Mathematical Statistics.
PY - 2025
Y1 - 2025
N2 - In Coevolving Latent Space Networks with Attractors (CLSNA) models, nodes in a latent space represent social actors, and edges indicate their dynamic interactions. Attractors are added at the latent level to capture the notion of attractive and repulsive forces between nodes, borrowing from dynamical systems theory. However, CLSNA reliance on MCMC estimation makes scaling difficult, and the requirement for nodes to be present throughout the study period limit practical applications. We address these issues by (i) introducing a Stochastic gradient descent (SGD) parameter estimation method, (ii) developing a novel approach for uncertainty quantification using SGD, and (iii) extending the model to allow nodes to join and leave over time. Simulation results show that our extensions result in little loss of accuracy compared to MCMC, but can scale to much larger networks. We apply our approach to the longitudinal social networks of members of US Congress on the social media platform X. Accounting for node dynamics overcomes selection bias in the network and uncovers uniquely and increasingly repulsive forces within the Republican Party. Supplemental materials for the article are available online.
AB - In Coevolving Latent Space Networks with Attractors (CLSNA) models, nodes in a latent space represent social actors, and edges indicate their dynamic interactions. Attractors are added at the latent level to capture the notion of attractive and repulsive forces between nodes, borrowing from dynamical systems theory. However, CLSNA reliance on MCMC estimation makes scaling difficult, and the requirement for nodes to be present throughout the study period limit practical applications. We address these issues by (i) introducing a Stochastic gradient descent (SGD) parameter estimation method, (ii) developing a novel approach for uncertainty quantification using SGD, and (iii) extending the model to allow nodes to join and leave over time. Simulation results show that our extensions result in little loss of accuracy compared to MCMC, but can scale to much larger networks. We apply our approach to the longitudinal social networks of members of US Congress on the social media platform X. Accounting for node dynamics overcomes selection bias in the network and uncovers uniquely and increasingly repulsive forces within the Republican Party. Supplemental materials for the article are available online.
KW - Attractors
KW - Co-evolving network model
KW - Dynamic networks analysis
KW - Longitudinal social networks
KW - Partisan polarization
UR - https://www.scopus.com/pages/publications/86000236740
U2 - 10.1080/10618600.2024.2447478
DO - 10.1080/10618600.2024.2447478
M3 - Article
AN - SCOPUS:86000236740
SN - 1061-8600
VL - 34
SP - 1366
EP - 1375
JO - Journal of Computational and Graphical Statistics
JF - Journal of Computational and Graphical Statistics
IS - 4
ER -