cdf.compare
Compare Cumulative Distribution Functions
Description
For a one sample problem, compares the empirical distribution function (edf) 
of the sample with a hypothesized cumulative distribution function.  
For a two sample problem, 
compares the edfs for the two samples.  This graphical comparison 
is often useful 
before performing the  
Kolmogorov-Smirnov test (function ks.gof).  
Usage
cdf.compare(x, y = NULL, distribution = "normal", ...)
Arguments
| x | numeric vector. NAs and Infs are allowed but will  be   
removed. | 
| y | numeric vector. NAs and Infs are allowed but will  be  removed. | 
| distribution | character string that specifies the hypothesized distribution in the 
one sample test.  For two samples, i.e. when y is specified, this 
argument is ignored.  distribution can be one  of: 
"normal", "beta", "cauchy", "chisquare", "exponential", "f", "gamma", 
"lognormal", 
"logistic", "t", "uniform", "weibull", "binomial", "geometric",  
"hypergeometric", 
"negbinomial", "poisson", or "wilcoxon".  
You need only supply the first characters that 
uniquely specify the distribution name.  For example, "logn" 
and "logi" uniquely specify the lognormal and logistic 
distributions. | 
| ... | For one sample,  parameter arguments for 
the function that generates p-values for 
the hypothesized distribution. | 
 
Side Effects
Produces a plot of the two compared cdfs on the current graphics device. 
See Also
Examples
# one sample 
z <- rnorm(100)                   
# compare with a normal distn:
cdf.compare(z, dist = "normal") 
# compare with a chisquare distn.:
cdf.compare(z, dist = "chisquare", df = 2)
# two sample 
x <- rnorm(25) 
y <- rexp(100) 
cdf.compare(x, y)