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vardpoor (version 0.5.2)

Variance Estimation for Sample Surveys by the Ultimate Cluster Method

Description

Generation of domain variables, linearisation of several nonlinear population statistics (the ratio of two totals, weighted income percentile, relative median income ratio, at-risk-of-poverty rate, at-risk-of-poverty threshold, Gini coefficient, gender pay gap, the aggregate replacement ratio, the relative median income ratio, median income below at-risk-of-poverty gap, income quintile share ratio, relative median at-risk-of-poverty gap), computation of regression residuals in case of weight calibration, variance estimation of sample surveys by the ultimate cluster method (Hansen, Hurwitz and Madow, 1953), variance estimation for longitudinal, cross-sectional measures and measures of change for single and multistage stage cluster sampling designs (Berger, Y.G.). Several other precision measures are derived - standard error, the coefficient of variation, the margin of error, confidence interval, design effect.

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install.packages('vardpoor')

Monthly Downloads

1,542

Version

0.5.2

License

GPL (>= 2)

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Maintainer

Juris Breidaks

Last Published

January 8th, 2016

Functions in vardpoor (0.5.2)

vardpoor-package

Variance Estimation for Sample Surveys by the Ultimate Cluster Method
vardom_othstr

Variance estimation for sample surveys in domain by the two stratification
lingini2

Linearization of the GINI coefficient II
linarpr

Linearization of at-risk-of-poverty rate
linrmir

Linearization of the relative median income ratio
varpoord

Estimation of the variance and deff for sample surveys for indicators on social exclusion and poverty
lingpg

Linearization of the gender pay (wage) gap.
linrmpg

Linearization of the relative median at-risk-of-poverty gap
variance_est

Variance estimation for sample surveys by the ultimate cluster method
variance_othstr

Variance estimation for sample surveys by the new stratification
domain

Extra variables for domain estimation
linqsr

Linearization of the Quintile Share Ratio
linpoormed

Linearization of the median income of individuals below the At Risk of Poverty Threshold
lingini

Linearization of the GINI coefficient I
vardchanges

Variance estimation for measures of change for single and multistage stage cluster sampling designs
vardchangespoor

Variance estimation for measures of change for sample surveys for indicators on social exclusion and poverty
var_srs

The estimation of the simple random sampling.
vardcros

Variance estimation for cross-sectional, longitudinal measures for single and multistage stage cluster sampling designs
residual_est

Residual estimation of calibration
linarr

Linearization of the aggregate replacement ratio
vardomh

Variance estimation for sample surveys in domain for household surveys by the ultimate cluster method
vardcrospoor

Variance estimation for cross-sectional, longitudinal measures for indicators on social exclusion and poverty.
vardchangannual

Variance estimation for measures of annual net change for single and multistage stage cluster sampling designs
vardom

Variance estimation of the sample surveys in domain by the ultimate cluster method
incPercentile

Estimation of weighted percentiles
lin.ratio

Linearization of the ratio estimator
linarpt

Linearization of at-risk-of-poverty threshold