AbstractTracking the correct directions of monotonicity in multi-dimensional modeling plays an important role in interpreting functional associations. In the presence of multiple predictors, we provide empirical evidence that the observed monotone directions via parametric, nonparametric or semiparametric fit of commonly used multi-dimensional models may entirely violate the actual directions of monotonicity. This breakdown is caused primarily by the dependence structure of covariates, with negligible influence from the bias of function estimation. To examine the linkage between the dependent covariates and monotone directions, we first generalize Stein’s Lemma for random variables which are mutually independent Gaussian to two important ca...
<p>In deterministic computer experiments, it is often known that the output is a monotonic function ...
Thesis (Ph.D.)--University of Washington, 2018In this dissertation, we study general strategies for ...
Summary The covariance structure of multivariate functional data can be highly comple...
Tracking the correct directions of monotonicity in multi-dimensional modeling plays an important rol...
Abstract. Let f be a function on R d that is monotonic in every variable. There are 2 d possible ass...
When the failure function is monotone, some monotonic reliability methods are used to gratefully sim...
In many statistical regression and prediction problems, it is reasonable to assume monotone relation...
Problem statement: When analyzing random variables it was useful to measure the degree of their mono...
Common approaches to monotonic regression focus on the case of a uni-dimensional covariate and conti...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
AbstractWe establish the Stein phenomenon in the context of two-step, monotone incomplete data drawn...
In this dissertation we propose factor copula models where dependence is modeled via one or several ...
This paper studies the problem of testing whether a function is monotone from a nonparametric Bayesi...
We consider the problem of testing monotonicity of the regression function in a nonparametric regres...
<p>In deterministic computer experiments, it is often known that the output is a monotonic function ...
Thesis (Ph.D.)--University of Washington, 2018In this dissertation, we study general strategies for ...
Summary The covariance structure of multivariate functional data can be highly comple...
Tracking the correct directions of monotonicity in multi-dimensional modeling plays an important rol...
Abstract. Let f be a function on R d that is monotonic in every variable. There are 2 d possible ass...
When the failure function is monotone, some monotonic reliability methods are used to gratefully sim...
In many statistical regression and prediction problems, it is reasonable to assume monotone relation...
Problem statement: When analyzing random variables it was useful to measure the degree of their mono...
Common approaches to monotonic regression focus on the case of a uni-dimensional covariate and conti...
In regression problems, it is often of interest to assume that the relationship between a predictor ...
In this thesis, we first present an overview of monotone regression, both in the classical setting a...
AbstractWe establish the Stein phenomenon in the context of two-step, monotone incomplete data drawn...
In this dissertation we propose factor copula models where dependence is modeled via one or several ...
This paper studies the problem of testing whether a function is monotone from a nonparametric Bayesi...
We consider the problem of testing monotonicity of the regression function in a nonparametric regres...
<p>In deterministic computer experiments, it is often known that the output is a monotonic function ...
Thesis (Ph.D.)--University of Washington, 2018In this dissertation, we study general strategies for ...
Summary The covariance structure of multivariate functional data can be highly comple...