ss2s4p {samplesize4surveys} | R Documentation |
Sample Sizes in Two-Stage sampling Designs for Estimating Signle Proportions
Description
This function computes a grid of possible sample sizes for estimating single proportions under two-stage sampling designs.
Usage
ss2s4p(N, P, conf = 0.95, delta = 0.03, M, to = 20, rho)
Arguments
N |
The population size. |
P |
The value of the estimated proportion. |
conf |
The statistical confidence. By default |
delta |
The maximun margin of error that can be allowed for the estimation. |
M |
Number of clusters in the population. |
to |
(integer) maximum number of final units to be selected per cluster. By default |
rho |
The Intraclass Correlation Coefficient. |
Details
In two-stage (2S) sampling, the design effect is defined by
DEFF = 1 + (\bar{m}-1)\rho
Where \rho
is defined as the intraclass correlation coefficient,
\bar{m}
is the average sample size of units selected inside each cluster.
The relationship of the full sample size of the two stage design (2S) with the
simple random sample (SI) design is given by
n_{2S} = n_{SI}*DEFF
Value
This function returns a grid of possible sample sizes. The first column represent the design effect, the second column is the number of clusters to be selected, the third column is the number of units to be selected inside the clusters, and finally, the last column indicates the full sample size induced by this particular strategy.
Author(s)
Hugo Andres Gutierrez Rojas <hagutierrezro at gmail.com>
References
Gutierrez, H. A. (2009), Estrategias de muestreo: Diseno de encuestas y estimacion de parametros. Editorial Universidad Santo Tomas
See Also
Examples
ss2s4p(N=100000, P=0.5, delta=0.05, M=50, rho=0.01)
ss2s4p(N=100000, P=0.5, delta=0.05, M=500, to=40, rho=0.1)
ss2s4p(N=100000, P=0.5, delta=0.03, M=1000, to=100, rho=0.2)
############################
# Example 2 with Lucy data #
############################
data(BigLucy)
attach(BigLucy)
N <- nrow(BigLucy)
P <- prop.table(table(SPAM))[1]
y <- Domains(SPAM)[, 1]
cl <- Segments
rho <- ICC(y,cl)$ICC
M <- length(levels(Segments))
ss2s4p(N, P, conf=0.95, delta = 0.03, M=M, to=30, rho=rho)