High-Dimensional Covariate-Dependent Discrete Graphical Models and Dynamic Ising Models
By: Lyndsay Roach , Qiong Li , Nanwei Wang and more
Potential Business Impact:
Shows how things change together over time.
We propose a covariate-dependent discrete graphical model for capturing dynamic networks among discrete random variables, allowing the dependence structure among vertices to vary with covariates. This discrete dynamic network encompasses the dynamic Ising model as a special case. We formulate a likelihood-based approach for parameter estimation and statistical inference. We achieve efficient parameter estimation in high-dimensional settings through the use of the pseudo-likelihood method. To perform model selection, a birth-and-death Markov chain Monte Carlo algorithm is proposed to explore the model space and select the most suitable model.
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