Recent developments in statistical regression methodology shift away from pure mean regression towards distributional regression models. One important strand thereof is that of conditional transformation models (CTMs). CTMs infer the entire conditional distribution directly by applying a transformation function to the response conditionally on a set of covariates towards a simple log-concave reference distribution. Thereby, CTMs allow not only variance, kurtosis or skewness but the complete conditional distribution to depend on the explanatory variables. We propose a Bayesian notion of conditional transformation models (BCTMs) focusing on exactly observed continuous responses, but also incorporating extensions to randomly censored and discr...
peer reviewedPenalized B-splines are commonly used in additive models to describe smooth changes in ...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
In this paper I present a novel approach to inference in models where the partially identified param...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
The broad class of conditional transformation models includes interpretable and simple as well as po...
We propose a class of transformation hazard models for rightcensored failure time data. It includes ...
Regression models describing the joint distribution of multivariate responses conditional on covaria...
This thesis explores approaches to regression that utilise the treatment of covariates as random var...
Continuous response variables are often transformed to meet modeling assumptions, but the choice of ...
This article proposes a class of asymptotically distribution-free specification tests for parametric...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
We study the sampling properties of two alternative approaches to estimating the conditional distrib...
Regression models for supervised learning problems with a continuous response are commonly understoo...
We propose and study properties of maximum likelihood estimators in the class of conditional transfo...
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
peer reviewedPenalized B-splines are commonly used in additive models to describe smooth changes in ...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
In this paper I present a novel approach to inference in models where the partially identified param...
The ultimate goal of regression analysis is to obtain information about the conditional distribution...
The broad class of conditional transformation models includes interpretable and simple as well as po...
We propose a class of transformation hazard models for rightcensored failure time data. It includes ...
Regression models describing the joint distribution of multivariate responses conditional on covaria...
This thesis explores approaches to regression that utilise the treatment of covariates as random var...
Continuous response variables are often transformed to meet modeling assumptions, but the choice of ...
This article proposes a class of asymptotically distribution-free specification tests for parametric...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
We study the sampling properties of two alternative approaches to estimating the conditional distrib...
Regression models for supervised learning problems with a continuous response are commonly understoo...
We propose and study properties of maximum likelihood estimators in the class of conditional transfo...
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
peer reviewedPenalized B-splines are commonly used in additive models to describe smooth changes in ...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
In this paper I present a novel approach to inference in models where the partially identified param...