Publication | Closed Access
High Dimensional Semiparametric Latent Graphical Model for Mixed Data
97
Citations
47
References
2016
Year
Latent ModelingGaussian Copula DistributionMultivariate AnalysisData ScienceBinary VariablesEngineeringHigh-dimensional MethodGraphical ModelSemi-nonparametric EstimationBusinessLatent Variable ModelStatistical InferenceMixed DataLatent VariablesFunctional Data AnalysisStatisticsCopulas
Summary We propose a semiparametric latent Gaussian copula model for modelling mixed multivariate data, which contain a combination of both continuous and binary variables. The model assumes that the observed binary variables are obtained by dichotomizing latent variables that satisfy the Gaussian copula distribution. The goal is to infer the conditional independence relationship between the latent random variables, based on the observed mixed data. Our work has two main contributions: we propose a unified rank-based approach to estimate the correlation matrix of latent variables; we establish the concentration inequality of the proposed rank-based estimator. Consequently, our methods achieve the same rates of convergence for precision matrix estimation and graph recovery, as if the latent variables were observed. The methods proposed are numerically assessed through extensive simulation studies, and real data analysis.
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