View source: R/ComparePowerOneSampleCTest.R
| ComparePowerOneSampleCTest | R Documentation | 
ComparePowerOneSampleCTest returns the percentage of rejections for the one-sample C-test when different resampling methods
are used.
ComparePowerOneSampleCTest(
  generator,
  mu_0,
  shiftVector,
  sampleSize = 10,
  numberOfSamples = 10,
  initialSamples = 100,
  theta = 1/3,
  significance = 0.05,
  ...
)
| generator | Name of the generator for sampling initial samples.
For the possible names check the values of  | 
| mu_0 | Triangular or trapezoidal fuzzy number which is used for the null hypothesis of the C-test. | 
| shiftVector | Deterministic vector of shifts that are sequentially added to all initial samples. | 
| sampleSize | Size of the single initial sample. | 
| numberOfSamples | Number of the bootstrapped samples used to estimate the p-value. | 
| initialSamples | Number of the generated initial samples. More than one value can be given in the form of matrix. | 
| theta | The weighting parameter for the mid/spread distance applied in the C-test. | 
| significance | The significance value used to accept/reject the hypothesis for the one-sample C-test. | 
| ... | Parameters which are passed to  | 
The function generates a sequence of initial samples (their number is given in initialSamples,
the size is determined by sampleSize) for fuzzy numbers of the type specified by generator.
Then a sequence of deterministic shifts described by vector shiftVector is added to
each fuzzy observation in these samples.
Next, function OneSampleCTest is executed to calculate the p-value for each combination of the initial sample and
resampling method. Then, by comparing the p-value with the assumed significance level
significance we make a decision whether to reject the null hypothesis for the one-sample C-test for the mean
(see Lubiano et al. (2016))  or not.
The output of this procedure is the percentage of rejections as a function of values from shiftVector.
This function returns a matrix of percentage of rejections for the one-sample C-test for the mean.
Rows in this matrix
are related to the values from shiftVector, and the columns - to all resampling methods.
Lubiano, M.A., Montenegro M., Sinova, B., de Saa, S.R., Gil, M.A. (2016) Hypothesis testing for means in connection with fuzzy rating scale-based data: algorithms and applications European Journal of Operational Research, 251, pp. 918-929
ComparisonSEMean for the comparison of resampling methods based on SE/MSE for the mean,
ComparisonOneSampleCTest for the comparison of resampling methods based on power for the one-sample C-test
for the mean.
Other comparison of resampling methods: 
ComparisonOneSampleCTest(),
ComparisonSEMean()
## Not run: 
# seed PRNG
set.seed(1234)
# compare the resampling methods for the synthetic data generated using GeneratorNU function
# and two values of the shifts
ComparePowerOneSampleCTest("GeneratorNU",mu_0 = c(-0.4,-0.1,0.1,0.4), shiftVector = c(0,0.5),
mu = 0, sigma = 1, a = 0.2, b = 0.6)
## End(Not run)
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