This article shows how to smoothly "monotonize" standard kernel estimators of hazard rate, using bootstrap weights. Our method takes a variety of forms, depending on choice of kernel estimator and on the distance function used to define a certain constrained optimization problem. We confine attention to a particularly simple kernel approach and explore a range of distance functions. It is straightforward to reduce "quadratic" inequality constraints to "linear" equality constraints, and so our method may be implemented using little more than conventional Newton-Raphson iteration. Thus, the necessary computational techniques are very familiar to statisticians. We show both numerically and theoretically that monotonicity, in either direction, ...
We investigate the asymptotic behavior of the Lp-distance betweena monotone function on a compact in...
summary:This text describes a method of estimating the hazard rate of survival data following monoto...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
This article shows how to smoothly "monotonize" standard kernel estimators of hazard rate, using boo...
. We show how to smoothly `monotonise' standard kernel estimators of hazard rate, using bootstr...
In this thesis we address the problem of estimating a curve of interest (which might be a probabilit...
In this thesis we address the problem of estimating a curve of interest (which might be a probabilit...
A test of the null hypothesis that a hazard rate is monotone nondecreasing, versus the alternative t...
A test of the null hypothesis that a hazard rate is monotone nondecreasing, versus the alternative t...
Two new test statistics are introduced to test the null hypotheses that the sampling distri-bution h...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
ABSTRACT. In this article, we develop a test for the null hypothesis that a real-valued function bel...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
summary:This text describes a method of estimating the hazard rate of survival data following monoto...
We investigate the asymptotic behavior of the Lp-distance betweena monotone function on a compact in...
summary:This text describes a method of estimating the hazard rate of survival data following monoto...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...
This article shows how to smoothly "monotonize" standard kernel estimators of hazard rate, using boo...
. We show how to smoothly `monotonise' standard kernel estimators of hazard rate, using bootstr...
In this thesis we address the problem of estimating a curve of interest (which might be a probabilit...
In this thesis we address the problem of estimating a curve of interest (which might be a probabilit...
A test of the null hypothesis that a hazard rate is monotone nondecreasing, versus the alternative t...
A test of the null hypothesis that a hazard rate is monotone nondecreasing, versus the alternative t...
Two new test statistics are introduced to test the null hypotheses that the sampling distri-bution h...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
ABSTRACT. In this article, we develop a test for the null hypothesis that a real-valued function bel...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
summary:This text describes a method of estimating the hazard rate of survival data following monoto...
We investigate the asymptotic behavior of the Lp-distance betweena monotone function on a compact in...
summary:This text describes a method of estimating the hazard rate of survival data following monoto...
We suggest a method for monotonizing general kernel-type estimators, for example local linear estima...