Existing jackknife variance estimators used with sample surveys can seriously overestimate the true variance under unistage stratified sampling without replacement with unequal probabilities. A novel jackknife variance estimator is proposed which is as numerically simple as existing jackknife variance estimators. Under certain regularity conditions, the proposed variance estimator is consistent under stratified sampling without replacement with unequal probabilities. The high entropy regularity condition necessary for consistency is shown to hold for the Rao–Sampford design. An empirical study of three unequal probability sampling designs supports our findings
In this paper, the delete-mj jackknife estimator is proposed. This estimator is based on samples obt...
Includes bibliographical references.Many important estimators in statistics have the property that t...
In the present study, we consider the problem of missing and extreme values for the estimation of po...
The jackknife method is often used for variance estimation in sample surveys but has only been devel...
In survey sampling, accuracy of point estimates are assessed using variance estimates. Variance esti...
Self-weighted two-stage sampling designs are popular in practice as they simplify field-work. It is ...
We propose a jackknife variance estimator under two-fases sampling with unequal probability. We assu...
Imputation is commonly used to compensate for item non-response in sample surveys. If we treat the i...
Large scale surveys very often involve multi-stage sampling design, where the first-stage units are...
item nonresponse, stratified multistage sam-pling Item nonresponse is usually handled by some form o...
We propose a jackknife variance estimator for the pop-ulation average from two, two-phase samples af...
Not AvailableTwo new Jackknife methods, as the counterparts of two existing Bootstrap methods of var...
This thesis presents the Jackknife Variance Estimator as a cost efficient alternative to the Bootstr...
In this paper, the delete-mj jackknife estimator is proposed. This estimator is based on samples obt...
Se emplea la metodología jackknife para muestreo con probabilidades desiguales en la estimación de v...
In this paper, the delete-mj jackknife estimator is proposed. This estimator is based on samples obt...
Includes bibliographical references.Many important estimators in statistics have the property that t...
In the present study, we consider the problem of missing and extreme values for the estimation of po...
The jackknife method is often used for variance estimation in sample surveys but has only been devel...
In survey sampling, accuracy of point estimates are assessed using variance estimates. Variance esti...
Self-weighted two-stage sampling designs are popular in practice as they simplify field-work. It is ...
We propose a jackknife variance estimator under two-fases sampling with unequal probability. We assu...
Imputation is commonly used to compensate for item non-response in sample surveys. If we treat the i...
Large scale surveys very often involve multi-stage sampling design, where the first-stage units are...
item nonresponse, stratified multistage sam-pling Item nonresponse is usually handled by some form o...
We propose a jackknife variance estimator for the pop-ulation average from two, two-phase samples af...
Not AvailableTwo new Jackknife methods, as the counterparts of two existing Bootstrap methods of var...
This thesis presents the Jackknife Variance Estimator as a cost efficient alternative to the Bootstr...
In this paper, the delete-mj jackknife estimator is proposed. This estimator is based on samples obt...
Se emplea la metodología jackknife para muestreo con probabilidades desiguales en la estimación de v...
In this paper, the delete-mj jackknife estimator is proposed. This estimator is based on samples obt...
Includes bibliographical references.Many important estimators in statistics have the property that t...
In the present study, we consider the problem of missing and extreme values for the estimation of po...