An isotonic regression truncated by confining its domain to a union of its level sets is the isotonic regression in the reduced function space. When some of the weights with which the inner product system is defined go to infinity, the truncated isotonic regression converges. This limit can be used in discribing the projection onto the set of vectors which satisfy an order restriction and have one or more of its coordinates bounded above and/or below. Through this characterization, two inequalities associated with the projection are established and found useful in order and bound restricted statistical inference. The results obtained show that for an exponential distribution family the inequalities lead to the linkage of the order and bound...
Limit distributions for the greatest convex minorant and its derivative are considered for a general...
In the context of nonparametric regression, shape-constrained estimators such as isotonic regression...
78We consider the problem of predicting as well as the best linear combination of d given functions ...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
We consider the problem of estimating an unknown non-decreasing se-quence θ from finitely many noisy...
We study the isotonic regression estimator over a general countable pre-ordered set. We obtain the l...
International audienceWe consider the minimization of submodular functions subject to ordering const...
We propose a class of nonparametric estimators for the regression models based on least squares over...
We study the least squares regression function estimator over the class of real-valued functions on ...
We study the least squares regression function estimator over the class of real-valued functions on ...
Prior information regarding a statistical model frequently constrains the shape of the parameter set...
Abstract: Consider the Gaussian sequence model y ∼ N(θ∗, σ2In), where θ ∗ is unknown but known to be...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Paper presented to the 5th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
We consider the problem of predicting as well as the best linear combination of d given functions in...
Limit distributions for the greatest convex minorant and its derivative are considered for a general...
In the context of nonparametric regression, shape-constrained estimators such as isotonic regression...
78We consider the problem of predicting as well as the best linear combination of d given functions ...
An isotonic regression truncated by confining its domain to a union of its level sets is the isotoni...
We consider the problem of estimating an unknown non-decreasing se-quence θ from finitely many noisy...
We study the isotonic regression estimator over a general countable pre-ordered set. We obtain the l...
International audienceWe consider the minimization of submodular functions subject to ordering const...
We propose a class of nonparametric estimators for the regression models based on least squares over...
We study the least squares regression function estimator over the class of real-valued functions on ...
We study the least squares regression function estimator over the class of real-valued functions on ...
Prior information regarding a statistical model frequently constrains the shape of the parameter set...
Abstract: Consider the Gaussian sequence model y ∼ N(θ∗, σ2In), where θ ∗ is unknown but known to be...
ing case antitonic regression. The corresponding umbrella term for both cases is monotonic regressio...
Paper presented to the 5th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
We consider the problem of predicting as well as the best linear combination of d given functions in...
Limit distributions for the greatest convex minorant and its derivative are considered for a general...
In the context of nonparametric regression, shape-constrained estimators such as isotonic regression...
78We consider the problem of predicting as well as the best linear combination of d given functions ...