power.rr.test {rr} | R Documentation |
Power Analysis for Randomized Response
Description
power.rr.test
is used to conduct power analysis for randomized
response survey designs.
Usage
power.rr.test(p, p0, p1, q, design, n = NULL, r, presp, presp.null =
NULL, sig.level, prespT, prespC, prespT.null = NULL, prespC.null, power =
NULL, type = c("one.sample", "two.sample"), alternative = c("one.sided",
"two.sided"), solve.tolerance = .Machine$double.eps)
Arguments
p |
The probability of receiving the sensitive question (Mirrored Question Design, Unrelated Question Design); the probability of answering truthfully (Forced Response Design); the probability of selecting a red card from the 'yes' stack (Disguised Response Design). |
p0 |
The probability of forced 'no' (Forced Response Design). |
p1 |
The probability of forced 'yes' (Forced Response Design). |
q |
The probability of answering 'yes' to the unrelated question, which is assumed to be independent of covariates (Unrelated Question Design). |
design |
Call of design (including modified designs) used: "forced-known", "mirrored", "disguised", "unrelated-known", "forced-unknown", and "unrelated-unknown". |
n |
Number of observations. Exactly one of 'n' or 'power' must be NULL. |
r |
For the modified designs only (i.e. "forced-unknown" for Forced
Response with Unknown Probability and "unrelated-unknown" for Unrelated
Question with Unknown Probability), |
presp |
For a one sample test, the probability of possessing the sensitive trait under the alternative hypothesis. |
presp.null |
For a one sample test, the probability of possessing the
sensitive trait under the null hypothesis. The default is |
sig.level |
Significance level (Type I error probability). |
prespT |
For a two sample test, the probability of the treated group possessing the sensitive trait under the alternative hypothesis. |
prespC |
For a two sample test, the probability of the control group possessing the sensitive trait under the alternative hypothesis. |
prespT.null |
For a two sample test, the probability of the treated
group possessing the sensitive trait under the null hypothesis. The default
is |
prespC.null |
For a two sample test, the probability of the control group possessing the sensitive trait under the null hypothesis. |
power |
Power of test (Type II error probability). Exactly one of 'n' or 'power' must be NULL. |
type |
One or two sample test. For a two sample test, the alternative and null hypotheses refer to the difference between the two samples of the probabilities of possessing the sensitive trait. |
alternative |
One or two sided test. |
solve.tolerance |
When standard errors are calculated, this option specifies the tolerance of the matrix inversion operation solve. |
Details
This function allows users to conduct power analysis for randomized response survey designs, both for the standard designs ("forced-known", "mirrored", "disguised", "unrelated-known") and modified designs ("forced-unknown", and "unrelated -unknown").
Value
power.rr.test
contains the following components (the
inclusion of some components such as the design parameters are dependent
upon the design used):
n |
Point estimates for the effects of covariates on the randomized response item. |
r |
Standard errors for estimates of the effects of covariates on the randomized response item. |
presp |
For a one sample test, the probability of possessing the sensitive trait under the alternative hypothesis. For a two sample test, the difference between the probabilities of possessing the sensitive trait for the treated and control groups under the alternative hypothesis. |
presp.null |
For a one sample test, the probability of possessing the sensitive trait under the null hypothesis. For a two sample test, the difference between the probabilities of possessing the sensitive trait for the treated and control groups under the null hypothesis. |
sig.level |
Significance level (Type I error probability). |
power |
Power of test (Type II error probability). |
type |
One or two sample test. |
alternative |
One or two sided test. |
References
Blair, Graeme, Kosuke Imai and Yang-Yang Zhou. (2015) "Design and Analysis of the Randomized Response Technique." Journal of the American Statistical Association. Available at https://graemeblair.com/papers/randresp.pdf.
Examples
## Calculate the power to detect a sensitive item proportion of .2
## with the forced design with known probabilities of 2/3 in truth-telling group,
## 1/6 forced to say "yes" and 1/6 forced to say "no" and sample size of 200.
power.rr.test(p = 2/3, p1 = 1/6, p0 = 1/6, n = 200,
presp = .2, presp.null = 0,
design = "forced-known", sig.level = .01,
type = "one.sample", alternative = "one.sided")