4.4 Article

Network Mediation Analysis Using Model-Based Eigenvalue Decomposition

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ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
DOI: 10.1080/10705511.2020.1721292

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Network analysis; mediation analysis; model-based eigenvalue decomposition; latent variables

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  1. private unit at University of Notre Dame

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This paper presents a new two-stage network mediation method using a latent network approach and model-based eigenvalue decomposition for analyzing social network data. By controlling for conditional covariates and only considering the information left in the network, the method demonstrates its applicability to empirical network data.
This paper proposes a new two-stage network mediation method based on the use of a latent network approach - model-based eigenvalue decomposition - for analyzing social network data with nodal covariates. In the decomposition stage of the observed network, no assumption on the metric of the latent space structure is required. In the mediation stage, the most important eigenvectors of a network are used as mediators. This method further offers an innovative way for controlling for the conditional covariates, and it only considers the information left in the network. We demonstrate this approach in a detailed tutorial R code provided for four separate cases - unconditional and conditional model-based eigenvalue decompositions for either a continuous outcome or a binary outcome - to show its applicability to empirical network data.

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