There are several reasons why robust regression techniques are useful tools in sampling design. First of all, when stratified samples are considered, one needs to deal with three main issues: the sample size, the strata bounds determination and the sample allocation in the strata. Since the target variable Y, the objective of the survey, is unknown, some auxiliary information X known for the entire population from which the sample is drawn, is used. Such information is helpful as it is typically strongly correlated with the target Y. However, some discrepancies between these variables may arise. The use of auxiliary information, combined with the choice of the appropriate statistical model to estimate the relationship between Y and X, is cr...
In most economic and business surveys, the target variables (e.g. turnover of enterprises, income of...
We study robust sampling designs for model-based stratification, when the assumed distribution F0 (·...
In stratified sampling when only one unit is selected from each stratum, the estimation of variance ...
"There are several reasons why robust regression techniques are useful tools in sampling design. Fir...
There are several reasons why robust regression techniques are useful tools in sampling design. Firs...
There are several reasons why robust regression techniques are useful tools in sampling design. Fir...
The presence of outliers can strongly bias the sampling design and hence the survey results. In part...
A well-designed sampling plan can greatly enhance the information that can be produced from a survey...
In areas with marked differences in accessibility, the cost efficiency of design-based sampling stra...
statistical learning; data mining A well-designed sampling plan can greatly enhance the information ...
When designing a sampling survey, usually constraints are set on the desired precision levels regard...
Permission is hereby granted to the University of Alberta Library to reproduce single copies of this...
This thesis is a comparative study of optimal design-based univariate stratification as applied to h...
Sampling has evolved into a universally accepted approach for gathering information and data mining ...
Abstract: Consider a multi-stage survey with unequal probabilities at each stage and rich informatio...
In most economic and business surveys, the target variables (e.g. turnover of enterprises, income of...
We study robust sampling designs for model-based stratification, when the assumed distribution F0 (·...
In stratified sampling when only one unit is selected from each stratum, the estimation of variance ...
"There are several reasons why robust regression techniques are useful tools in sampling design. Fir...
There are several reasons why robust regression techniques are useful tools in sampling design. Firs...
There are several reasons why robust regression techniques are useful tools in sampling design. Fir...
The presence of outliers can strongly bias the sampling design and hence the survey results. In part...
A well-designed sampling plan can greatly enhance the information that can be produced from a survey...
In areas with marked differences in accessibility, the cost efficiency of design-based sampling stra...
statistical learning; data mining A well-designed sampling plan can greatly enhance the information ...
When designing a sampling survey, usually constraints are set on the desired precision levels regard...
Permission is hereby granted to the University of Alberta Library to reproduce single copies of this...
This thesis is a comparative study of optimal design-based univariate stratification as applied to h...
Sampling has evolved into a universally accepted approach for gathering information and data mining ...
Abstract: Consider a multi-stage survey with unequal probabilities at each stage and rich informatio...
In most economic and business surveys, the target variables (e.g. turnover of enterprises, income of...
We study robust sampling designs for model-based stratification, when the assumed distribution F0 (·...
In stratified sampling when only one unit is selected from each stratum, the estimation of variance ...