AbstractMonotone (or isotonic) regression plays an important role in data analysis and in other fields. In many cases the monotonicity is only defined for a partial instead of a total preorder. No efficient algorithm is known which solves the general problem in a finite number of steps. For an approximate solution of the optimum some error estimations are given.Moreover, some new results concerning monotone regression and the treatment of missing values are presented in this paper
In this paper, we consider the problem of finding the least-squares estimators of two isotonic regre...
Monotonic Regression (MR) is a standard method for extracting a monotone function from non-monotonic...
Monotonic regression (MR) is an efficient tool for estimating functions that are monotonic with resp...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
The problem of estimating a piecewise monotone sequence of normal means is called the nearly isotoni...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Monotonic (isotonic) regression is a powerful tool used for solving a wide range of important applie...
Common approaches to monotonic regression focus on the case of a uni-dimensional covariate and conti...
In many statistical regression and prediction problems, it is reasonable to assume monotone relation...
A finite sample comparison is carried out for three recent nonparametric methodologies in estimating...
In some applications, we require a monotone estimate of a regression function. In others, we want to...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
The monotone rearrrangement algorithm was introduced by Hardy, Littlewood and Po ́lya as a sorting d...
Monotonic regression is a standard method for extracting a monotone function from non-monotonic data...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
In this paper, we consider the problem of finding the least-squares estimators of two isotonic regre...
Monotonic Regression (MR) is a standard method for extracting a monotone function from non-monotonic...
Monotonic regression (MR) is an efficient tool for estimating functions that are monotonic with resp...
Abstract: We present a new algorithm for monotonic regression in one or more explanatory variables. ...
The problem of estimating a piecewise monotone sequence of normal means is called the nearly isotoni...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Monotonic (isotonic) regression is a powerful tool used for solving a wide range of important applie...
Common approaches to monotonic regression focus on the case of a uni-dimensional covariate and conti...
In many statistical regression and prediction problems, it is reasonable to assume monotone relation...
A finite sample comparison is carried out for three recent nonparametric methodologies in estimating...
In some applications, we require a monotone estimate of a regression function. In others, we want to...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
The monotone rearrrangement algorithm was introduced by Hardy, Littlewood and Po ́lya as a sorting d...
Monotonic regression is a standard method for extracting a monotone function from non-monotonic data...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
In this paper, we consider the problem of finding the least-squares estimators of two isotonic regre...
Monotonic Regression (MR) is a standard method for extracting a monotone function from non-monotonic...
Monotonic regression (MR) is an efficient tool for estimating functions that are monotonic with resp...