Author
Listed:
- Santiago Olivella
- Tyler Pratt
- Kosuke Imai
Abstract
The decision to engage in military conflict is shaped by many factors, including state- and dyad-level characteristics as well as the state’s membership in geopolitical coalitions. Supporters of the democratic peace theory, for example, hypothesize that the community of democratic states is less likely to wage war with each other. Such theories explain the ways in which nodal and dyadic characteristics affect the evolution of conflict patterns over time via their effects on group memberships. To test these arguments, we develop a dynamic model of network data by combining a hidden Markov model with a mixed-membership stochastic blockmodel that identifies latent groups underlying the network structure. Unlike existing models, we incorporate covariates that predict dynamic node memberships in latent groups as well as the direct formation of edges between dyads. While prior substantive research often assumes the decision to engage in international militarized conflict is independent across states and static over time, we demonstrate that conflict is driven by states’ evolving membership in geopolitical blocs. Our analysis of militarized disputes from 1816 to 2010 identifies two distinct blocs of democratic states, only one of which exhibits unusually low rates of conflict. Changes in monadic covariates like democracy shift states between coalitions, making some states more pacific but others more belligerent. Supplementary materials for this article are available online.
Suggested Citation
Santiago Olivella & Tyler Pratt & Kosuke Imai, 2022.
"Dynamic Stochastic Blockmodel Regression for Network Data: Application to International Militarized Conflicts,"
Journal of the American Statistical Association, Taylor & Francis Journals, vol. 117(539), pages 1068-1081, September.
Handle:
RePEc:taf:jnlasa:v:117:y:2022:i:539:p:1068-1081
DOI: 10.1080/01621459.2021.2024436
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