Resampling methods are widely studied and increasingly employed in applied research and practice. When dealing with complex sampling designs, common resampling techniques require adjusting noninteger sampling weights in order to construct the so called "pseudopopulation" in order to perform the actual resampling. The practice of rounding, however, has been empirically shown to be harmful under general designs. In this paper, we present asymptotic results concerning, in particular, the practice of rounding resampling weights to the nearest integer, an approach that is commonly adopted by virtue of its reduced computational burden, as opposed to randomization‐based alternatives. We prove that such approach leads to nonconsistent estimation of...
In practice, the use of rounding is ubiquitous. Although researchers have looked at the implications...
Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results un...
If rounded data are used in estimating moments and regression coefficients, the estimates are typica...
Resampling methods are widely studied and increasingly employed in applied research and practice. Wh...
Resampling methods are widely studied and increasingly employed in applied research and practice. W...
Bootstrap method is a popular tool for numerically assessing estimatorsâ accuracy, confidence int...
In the present paper, resampling for finite populations under an iid sampling design is reviewed. Ou...
In this paper, a class of resampling techniques for finite populations under πps sampling design is ...
In this paper, resampling techniques based on pseudo-populations in the presence of a general πps sa...
A resampling technique for probability-proportional-to size sampling designs is proposed. It is ess...
In this paper, a class of resampling techniques for finite populations under pps sampling design is ...
The effect of the practice of rounding non-integer weights in bootstrapping complex sam-ples form fi...
In complex designs, classical bootstrap methods result in a biased variance estimator when the samp...
In this paper, a new resampling technique for sampling designs with unequal inclusion probabilities ...
none2noThis article discusses some resampling techniques that have found widespread application in ...
In practice, the use of rounding is ubiquitous. Although researchers have looked at the implications...
Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results un...
If rounded data are used in estimating moments and regression coefficients, the estimates are typica...
Resampling methods are widely studied and increasingly employed in applied research and practice. Wh...
Resampling methods are widely studied and increasingly employed in applied research and practice. W...
Bootstrap method is a popular tool for numerically assessing estimatorsâ accuracy, confidence int...
In the present paper, resampling for finite populations under an iid sampling design is reviewed. Ou...
In this paper, a class of resampling techniques for finite populations under πps sampling design is ...
In this paper, resampling techniques based on pseudo-populations in the presence of a general πps sa...
A resampling technique for probability-proportional-to size sampling designs is proposed. It is ess...
In this paper, a class of resampling techniques for finite populations under pps sampling design is ...
The effect of the practice of rounding non-integer weights in bootstrapping complex sam-ples form fi...
In complex designs, classical bootstrap methods result in a biased variance estimator when the samp...
In this paper, a new resampling technique for sampling designs with unequal inclusion probabilities ...
none2noThis article discusses some resampling techniques that have found widespread application in ...
In practice, the use of rounding is ubiquitous. Although researchers have looked at the implications...
Bootstrap is a useful tool for making statistical inference, but it may provide erroneous results un...
If rounded data are used in estimating moments and regression coefficients, the estimates are typica...