Distributional regression for data analysis
N Klein - Annual Review of Statistics and Its Application, 2024 - annualreviews.org
Flexible modeling of how an entire distribution changes with covariates is an important yet
challenging generalization of mean-based regression that has seen growing interest over …
challenging generalization of mean-based regression that has seen growing interest over …
Global sensitivity analysis of stochastic computer models with joint metamodels
The global sensitivity analysis method used to quantify the influence of uncertain input
variables on the variability in numerical model responses has already been applied to …
variables on the variability in numerical model responses has already been applied to …
Robust estimation of mean and dispersion functions in extended generalized additive models
Generalized linear models are a widely used method to obtain parametric estimates for the
mean function. They have been further extended to allow the relationship between the mean …
mean function. They have been further extended to allow the relationship between the mean …
A flexible model for the mean and variance functions, with application to medical cost data
Medical cost data are often skewed to the right and heteroscedastic, having a nonlinear
relation with covariates. To tackle these issues, we consider an extension to generalized …
relation with covariates. To tackle these issues, we consider an extension to generalized …
Modelling collocation uncertainty of 3D atmospheric profiles
Atmospheric thermodynamic data are gathered by high technology remote instruments such
as radiosondes, giving rise to profiles that are usually modelled as functions depending only …
as radiosondes, giving rise to profiles that are usually modelled as functions depending only …
Joint estimation and variable selection for mean and dispersion in proper dispersion models
When describing adequately complex data structures one is often confronted with the fact
that mean as well as variance (or more generally dispersion) is highly influenced by some …
that mean as well as variance (or more generally dispersion) is highly influenced by some …
Two-piece distribution based semi-parametric quantile regression for right censored data
Widely used methods such as Cox proportional hazards, accelerated failure time, and
Bennet proportional odds models do not model the quantiles directly, but rather allow to …
Bennet proportional odds models do not model the quantiles directly, but rather allow to …
Estimating abundance from counts in large data sets of irregularly spaced plots using spatial basis functions
JM Ver Hoef, JK Jansen - Journal of Agricultural, Biological, and …, 2015 - Springer
Monitoring plant and animal populations is an important goal for both academic research
and management of natural resources. Successful management of populations often …
and management of natural resources. Successful management of populations often …
Flexible joint modeling of mean and dispersion for the directional tuning of neuronal spike counts
The study of how the number of spikes in a middle temporal visual area (MT/V5) neuron is
tuned to the direction of a visual stimulus has attracted considerable attention over the years …
tuned to the direction of a visual stimulus has attracted considerable attention over the years …
Dropout Regularization in Extended Generalized Linear Models based on Double Exponential Families
Even though dropout is a popular regularization technique, its theoretical properties are not
fully understood. In this paper we study dropout regularization in extended generalized …
fully understood. In this paper we study dropout regularization in extended generalized …