In many statistical regression and prediction problems, it is reasonable to assume monotone relationships between certain predictor variables and the outcome. Genomic effects on phenotypes are, for instance, often assumed to be monotone. However, in some settings, it may be reasonable to assume a partially linear model, where some of the covariates can be assumed to have a linear effect. One example is a prediction model using both high‐dimensional gene expression data, and low‐dimensional clinical data, or when combining continuous and categorical covariates. We study methods for fitting the partially linear monotone model, where some covariates are assumed to have a linear effect on the response, and some are assumed to have a monotone (p...
We provide a method for fitting monotone polynomials to data with both fixed and random effects. In ...
The degrees of freedom of semiparametric additive monotone models are derived using results about pr...
Although most models for incomplete longitudinal data are formulated within the selection model fram...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
We consider the problems of variable selection and estimation in nonparametric additive regression m...
Tracking the correct directions of monotonicity in multi-dimensional modeling plays an important rol...
In many data mining applications, it is a priori known that the target function should satisfy certa...
One of the standard problems in statistics consists of determining the relationship between a respon...
Linear mixed models (LMM) are commonly used when observations are no longer independent of each othe...
Abstract. Let f be a function on R d that is monotonic in every variable. There are 2 d possible ass...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
AbstractTracking the correct directions of monotonicity in multi-dimensional modeling plays an impor...
Determining which covariates enter the linear part of a partially linear additive model is always ch...
We consider the problem of variable selection for monotone single‐index models. A single‐index model...
We provide a method for fitting monotone polynomials to data with both fixed and random effects. In ...
The degrees of freedom of semiparametric additive monotone models are derived using results about pr...
Although most models for incomplete longitudinal data are formulated within the selection model fram...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
We consider the problems of variable selection and estimation in nonparametric additive regression m...
Tracking the correct directions of monotonicity in multi-dimensional modeling plays an important rol...
In many data mining applications, it is a priori known that the target function should satisfy certa...
One of the standard problems in statistics consists of determining the relationship between a respon...
Linear mixed models (LMM) are commonly used when observations are no longer independent of each othe...
Abstract. Let f be a function on R d that is monotonic in every variable. There are 2 d possible ass...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
AbstractTracking the correct directions of monotonicity in multi-dimensional modeling plays an impor...
Determining which covariates enter the linear part of a partially linear additive model is always ch...
We consider the problem of variable selection for monotone single‐index models. A single‐index model...
We provide a method for fitting monotone polynomials to data with both fixed and random effects. In ...
The degrees of freedom of semiparametric additive monotone models are derived using results about pr...
Although most models for incomplete longitudinal data are formulated within the selection model fram...