2015
DOI: 10.48550/arxiv.1512.02487
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High-Dimensional Gaussian Copula Regression: Adaptive Estimation and Statistical Inference

Abstract: We develop adaptive estimation and inference methods for high-dimensional Gaussian copula regression that achieve the same performance without the knowledge of the marginal transformations as that for high-dimensional linear regression. Using a Kendall's tau based covariance matrix estimator, an 1 regularized estimator is proposed and a corresponding de-biased estimator is developed for the construction of the confidence intervals and hypothesis tests. Theoretical properties of the procedures are studied and t… Show more

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“…Recently, semiparametric models have seen a wide adaptation for joint modeling of multivariate mixed type data. Wang & Hua (2014) used likelihood-based inference and Cai & Zhang (2015) developed a rank-based approach to estimate a joint semiparametric Gaussian copula for continuous variables. Fan et al (2016) extended the rank-based approaches to perform quantile regression on continuous variables.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, semiparametric models have seen a wide adaptation for joint modeling of multivariate mixed type data. Wang & Hua (2014) used likelihood-based inference and Cai & Zhang (2015) developed a rank-based approach to estimate a joint semiparametric Gaussian copula for continuous variables. Fan et al (2016) extended the rank-based approaches to perform quantile regression on continuous variables.…”
Section: Introductionmentioning
confidence: 99%