In factor analysis and structural equation modeling non-normal data simulation is traditionally performed by specifying univariate skewness and kurtosis together with the target covariance matrix. However, this leaves little control over the univariate distributions and the multivariate copula of the simulated vector. In this paper we explain how a more flexible simulation method called vine-to-anything (VITA) may be obtained from copula-based techniques, as implemented in a new R package, covsim. VITA is based on the concept of a regular vine, where bivariate copulas are coupled together into a full multivariate copula. We illustrate how to simulate continuous and ordinal data for covariance modeling, and how to use the new package discnor...
We develop factor copula models to analyse the dependence among mixed continuous and discrete respon...
Sample selection models deal with the situation in which an outcome of interest is observed for a re...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
This is the accepted, refereed and final manuscript to the article publishedWe present and investiga...
We present PLSIM, a new method for generating nonnormal data with a pre-specified covariance matrix ...
A factor copula model is proposed in which factors are either simulable or estimable from exogenous ...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
Copulas have become an important analytic tool for characterizing multivariate distributions and dep...
The copula-based modeling of multivariate distributions with continuous margins is presented as a su...
This textbook provides a step-by-step introduction to the class of vine copulas, their statistical i...
Input modeling software tries to fit standard probability distributions to data assuming that the da...
Multivariate statistical models based on copula functions have gained much popularity during the las...
The purpose of this article is to show how the multivariate structure (the ”shape” of the distributi...
We develop factor copula models to analyse the dependence among mixed continuous and discrete respon...
Sample selection models deal with the situation in which an outcome of interest is observed for a re...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
In factor analysis and structural equation modeling non-normal data simulation is traditionally perf...
This is the accepted, refereed and final manuscript to the article publishedWe present and investiga...
We present PLSIM, a new method for generating nonnormal data with a pre-specified covariance matrix ...
A factor copula model is proposed in which factors are either simulable or estimable from exogenous ...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
SEM researchers use Monte-Carlo simulations to ascertain the robustness of statistical estimators an...
Copulas have become an important analytic tool for characterizing multivariate distributions and dep...
The copula-based modeling of multivariate distributions with continuous margins is presented as a su...
This textbook provides a step-by-step introduction to the class of vine copulas, their statistical i...
Input modeling software tries to fit standard probability distributions to data assuming that the da...
Multivariate statistical models based on copula functions have gained much popularity during the las...
The purpose of this article is to show how the multivariate structure (the ”shape” of the distributi...
We develop factor copula models to analyse the dependence among mixed continuous and discrete respon...
Sample selection models deal with the situation in which an outcome of interest is observed for a re...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...