Abstract
This paper proposes a novel approach that combines dynamic linear models applied to graph data and variable selection through spike-and-slab priors. The new class of models, called Dynamic Graphical Variable Selection, is used to infer effective connectivity in certain brain regions allowing both connectivity weights and graphical structure to vary over time. One advantage of our method is that as the graphical structure is estimated inferentially, the computational cost is reduced. That way our methodology can accommodate high-dimensional data, such as large networks observed through long periods of time. We illustrate our methodology via numerical experiments with simulated and synthetic data, and then applied to fNIRS real data. The obtained results showed that the static version of our model is competitive against previous methodologies and demands a lower computational cost. Our model is more flexible than the previous methodologies by allowing the graphical structure to vary over time.
Funding Statement
The first author acknowledges the financial support given by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior – Brasil (CAPES) – Finance Code 001.
Acknowledgments
This article was based on the D.Sc. thesis on statistics from the first author, being supervised by the second and third authors.
Citation
Rebecca Souza. Lilia Costa. Marina Paez. João Sato. Candida Barreto. "Dynamic Graphical Models with Variable Selection for Effective Connectivity." Bayesian Anal. 19 (4) 1041 - 1065, December 2024. https://doi.org/10.1214/23-BA1377
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