We examine the incorporation of analyst input into the constrained estimation process. In the calibration literature, there are numerous examples of estimators with “optimal” properties. We show that many of these can be derived from first principles. Furthermore, we provide mechanisms for injecting user input to create user-constrained optimal estimates. We include derivations for common deviance measures with linear and nonlinear constraints and we demonstrate these methods on a contingency table and a simulated survey data set. R code and examples are available at https://github.com/mwilli/Constrained-estimation.git
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
Constraint programming (CP) is mainly based on filtering algorithms; their association with global c...
2021 Summer.Includes bibliographical references.We consider three topics in this dissertation: 1) No...
When analyzing an I × J contingency table, there are situations where sampling is taken from a sampl...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
AbstractThe calibration method has been widely discussed in the recent literature on survey sampling...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
In the context of "stylized" time-use surveys, constrained estimation problems are common, a simple ...
Parameter constraints are employed in a variety of situations in multidimensional estimation problem...
If a researcher wants to estimate the individual age, period, and cohort coeffi-cients in an age-per...
Survey calibration methods modify minimally unit-level sample weights to fit domain-level benchmark ...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
The article describes the R-package constrainedKriging, a tool for spatial prediction problems that ...
Survey calibration methods modify minimally unit-level sample weights to fit domain-level benchmark ...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
Constraint programming (CP) is mainly based on filtering algorithms; their association with global c...
2021 Summer.Includes bibliographical references.We consider three topics in this dissertation: 1) No...
When analyzing an I × J contingency table, there are situations where sampling is taken from a sampl...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
AbstractThe calibration method has been widely discussed in the recent literature on survey sampling...
In the analysis of contingency tables, often one faces two difficult criteria: sampled and target po...
In the context of "stylized" time-use surveys, constrained estimation problems are common, a simple ...
Parameter constraints are employed in a variety of situations in multidimensional estimation problem...
If a researcher wants to estimate the individual age, period, and cohort coeffi-cients in an age-per...
Survey calibration methods modify minimally unit-level sample weights to fit domain-level benchmark ...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
The article describes the R-package constrainedKriging, a tool for spatial prediction problems that ...
Survey calibration methods modify minimally unit-level sample weights to fit domain-level benchmark ...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
Constraint programming (CP) is mainly based on filtering algorithms; their association with global c...