Models based on multivariate t distributions are widely applied to analyze data with heavy tails. However, all the marginal distributions of the multivariate t distributions are restricted to have the same degrees of freedom, making these models unable to describe different marginal heavy-tailedness. We generalize the traditional multivariate t distributions to non-elliptically contoured multivariate t distributions, allowing for different marginal degrees of freedom. We apply the non-elliptically contoured multivariate t distributions to three widely-used models: the Heckman selection model with different degrees of freedom for selection and outcome equations, the multivariate Robit model with different degrees of freedom for marginal resp...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Many extensions of the multivariate...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...
We propose a family of multivariate heavy-tailed distributions that allow variable marginal amounts ...
We propose a family of multivariate heavy-tailed distributions that allow variable marginal amounts ...
In this study we investigate the problem of estimation and testing of hypotheses in multivariate lin...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
Predictive distributions of future response and future regression matrices under multivariate ellipt...
Linear mixed models were developed to handle clustered data and have been a topic of increasing inte...
Normality of random effects and error terms is a routine assumption for linear mixed models. However...
A robust Bayesian model for seemingly unrelated regression is proposed. By using heavy-tailed distri...
Linear mixed-effects models are frequently used to analyze repeated measures data, be-cause they mod...
Published in: Nolan, J.P. Comput Stat (2013) 28: 2067. doi:10.1007/s00180-013-0396-7Stable distribut...
Nonlinear mixed–effects models are very useful to analyze repeated measures data and are used in a v...
BULUT, Y. Murat/0000-0002-0545-7339; dogru, fatma zehra/0000-0001-8220-2375; arslan, olcay/0000-0002...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Many extensions of the multivariate...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...
We propose a family of multivariate heavy-tailed distributions that allow variable marginal amounts ...
We propose a family of multivariate heavy-tailed distributions that allow variable marginal amounts ...
In this study we investigate the problem of estimation and testing of hypotheses in multivariate lin...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
Predictive distributions of future response and future regression matrices under multivariate ellipt...
Linear mixed models were developed to handle clustered data and have been a topic of increasing inte...
Normality of random effects and error terms is a routine assumption for linear mixed models. However...
A robust Bayesian model for seemingly unrelated regression is proposed. By using heavy-tailed distri...
Linear mixed-effects models are frequently used to analyze repeated measures data, be-cause they mod...
Published in: Nolan, J.P. Comput Stat (2013) 28: 2067. doi:10.1007/s00180-013-0396-7Stable distribut...
Nonlinear mixed–effects models are very useful to analyze repeated measures data and are used in a v...
BULUT, Y. Murat/0000-0002-0545-7339; dogru, fatma zehra/0000-0001-8220-2375; arslan, olcay/0000-0002...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Many extensions of the multivariate...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
Abstract: This paper focuses on the problem of maximum likelihood estimation in linear mixed-effects...